CBR in the Health Sciences Workshop Proceedings.

 

A-B-C-D-E-F-G-H-I-J-K-L-M-N-O-P-Q-R-S-T-U-V-W-X-Y-Z

 

Aamodt, H.A. Sandtorv, O.M. Winnem, Combining Case-Based Reasoning and Data Mining - A Way of Revealing and Reusing RAMS Experience, Lydersen, Hansen and Sandorv (Eds.): Safety and Reliability, Proc. of ESREL`98, Trondheim, 1998, pp. 1345-1351.

Aamodt A., Plaza E.: Case-Based Reasoning: Foundational Issues, Methodological Variations, and System Approaches. Artificial Intelligence Com. Vol 7:1, pp. 39-59. IOS Press (1994).

Aamodt, A., (1991). A Knowledge Intensive, Integrated Approach to Problem Solving and Sustained Learning. Norwegian University of Science and Technology, Dept. of Information and Computer Science, PhD Dissertation.

Aaronson JS, Haas J, Overton GC. Knowledge discovery in GenBank. Proc Int Conf Intell Syst Mol Biol. 1993;1:3-11.

Abidi SS, Manickam S. Leveraging XML-based electronic medical records to extract experiential clinical knowledge. An automated approach to generate cases for medical case-based reasoning systems. Int J Med Inf. 2002 Dec;68(1-3):187-203.

Abidi SS, Manickam S. Transforming XML-based electronic patient records for use in medical case based reasoning systems. Stud Health Technol Inform. 2000;77:709-13.

Abidi, S. S. R.: Medical Knowledge Morphing: Towards Case-Specific Integration of Hetrogeneous Medical Knowledge Resources, In Proceedings of CBMS 2005, Eighteenth IEEE Symposium on Computer-Based Medical Systems (2005)

Abidi, S. S. R.: A Case Base Reasoning Framework to Author Personalized Health Mainte-nance Information. In Proceedings of the 15th IEEE Symposium on Computer-Based Medi-cal Systems (CBMS 2002)

Agrawal R., Faloutsos C., Swami A.N., Efficient similarity search in sequence databases, in D. Lomet, ed., Proc. 4th Int. Conf. of Foundations of Data Organization and Algorithms, pp. 69-84, Springer-Verlag, 1993.

Aha, D.W., McSherry, D., Yang, Q.: Advances in Conversational Case-Based Reasoning. Knowledge Engineering Review 20 (2005) 247-254

Aha, D.W., Breslow, L.A.: Comparing simplification procedures for decision trees on an economics classification task. Technical Report AIC-98-009, Navy Center for Applied Research in AI, Washington DC, 1998

Aha D.W.: The omnipresence of case-based reasoning in science and application. Knowledge-Based Systems, 11(5-6): 261-273 (1998)

Aha, D.: Lazy Learning. Artificial Intelligence Review, 11 (1997) 7-10

Aha D.W., Kibler D., and Albert M.K., Instance-based Learning Algorithm, Machine Learning, 6(1):37-66, 1991.

Alexanderini, F., Krechel, D., Maximini, K., von Wangenheim, A.: Integrating CBR into the Health Care Organization. In Proceedings of the 16th IEEE Symposium on Computer-Based Medical Systems (CBMS 03) (2003)

Althoff, K.D., Bergmann, R., Wess, S., Manago, M., Auriol, E., Larichev, O.I, Bolotov, A., Zhuravlev, Y.I., Gurov, S.I.: Case-based reasoning for medical decision support tasks: The Inreca approach, Artificial Intelligence in Medicine, Vol. 12 (1998) 25-41

American College of Sports Medecine, Baltimore, MD, ACM's Guidelines for Exercise Testing and Prescription, 1995.

Anderson, P., (May, 1996). Obsessive Compulsion and Tic Linked to Sore Throats. Medical The Post. http://www.mentalhealth.com/mag1/fr51.html.

Andren J. and Funk P. A Case Based Approach Using Behavioural Biometrics to Determine a User's Stress Level. In Workshop proceedings of the 6th International Conference on Case Based Reasoning. Chicago, editor(s): Isabelle Bichindaritz, Cindy Marling, pages 9. (2005) workshop 2005

Andren J. A case-based approach to determine stress levels based on keystroke dynamics. Master Thesis, Malardalen University, 2005.

Armengol, E. Palaudaries, A. & E Plaza (2000), Individual Prognosis of Diabetes Long-Term Risks: A CBR Approach. Methods of Information in Medicine Journal. 2001 Mar;40(1):46-51.

Armengol, E., Plaza E.: Integrating induction in a case-based reasoner. In: Keane, M., Haton, J.-P., Manago M. (eds.): Proceedings of EWCBR 94. Acknosoft Press, Paris (1994) 243-251

Arshadi N, Jurisica I: Data Mining for Case-based Reasoning in high-dimensional biological domains. In: IEEE Transactions on Knowledge and Data Engineering 17 (8), (2005) 1127-1137

Arshadi, N., Jurisica, I.: Maintaining Case-Based Reasoning Systems: A Machine Learning Approach. In: Funk, P., Gonzalez Calero, P. (eds.): Proceedings of ECCBR 04, Springer-Verlag, Lecture Notes in Artificial Intelligence 3155, Berlin, Heidel-berg, New York (2004) 17-31

Artnak KE, Dimmitt JH. Choosing a framework for ethical analysis in advanced practice settings: the case for casuistry. Arch Psychiatr Nurs. 1996 Feb;10(1):16-23.

Ashburner, M. et al, (2000). Gene Ontology: tool for the unification of biology. Nature Genetics, 25:25-29.

Ashley, K.D. , Lenz, M. (eds.): Textual Case-Based Reasoning. AAAI-98 Workshop, Technical Report WS-98-12, AAAI Press, Menlo Park, CA (1998)

Atkenson C.G., Moore A.W., and Schaal S. Locally weighted learning. AI Review Journal, 11:11-73, 1997.

Auriol, E., Wess, S., Manago, M., Althoff, K.-D., Traphoner, R.: INRECA: A Seam-less Integrated System Based on Inductive Inference and Case-Based Reasoning. In: Veloso, M., Aamodt, A. (eds.): Proceedings of ICCBR 95. Springer-Verlag, Lecture Notes in Artificial Intelligence 1010, Berlin, Heidelberg, New York (1995) 371-380

Auriol, E., Manago, M., Althoff, K.-D., Wess S., Dittrich S.: Integrating Induction and Case-Based Reasoning: Methodological Approach and First Evaluations. In: Keane, M., Haton, J.-P., Manago, M. (eds.): Proceedings of EWCBR 94. Acknosoft Press, Paris (1994) 145-155

Azuaje F, Dubitzky W, Black N, Adamson K. Improving clinical decision support through case-based data fusion. IEEE Trans Biomed Eng. 1999 Oct;46(10):1181-5.

Backhaus J., Mueller-Popker K., Hajak G., Vonderholzer U., GBerger M., Riemman D., Hohagen F.: Prevalence, Diagnosis and Treatment of Insomnia in General Practice. Journal of Sleep Research 7 (1998) 13.

Bados A. (1995) The tics and their upheavals: Nature and treatment in the childhood and adolescence. Madrid: Editions Pyramid S. A.

Baker, M., Ruddy, R.: Pulmonary emergencies. In Fleischer, G., Ludwig, S., eds.: Textbook of pediatric emergency medicine. 4 edn. Lippincott Williams & Wilkins, Philadelphia (2000) 1067-1087

Baldwin C.M., Kapur V.K., Holberg C.J., Nieto C.R.F.: Associations between Gender and Measures of Daytime Somnolence. Sleep 27 (2004) 305-311.

Bardossy A, Blinowska A: Fuzzy Reasoning in Pacemaker Control. In: Szczepaniak P, Lisboa P, Kacprzyk J, (eds). Fuzzy Systems in Medicine. Heilderberg: Springer-Verlag (2000) 451-466.

Bareiss, R.: Exemplar-Based Knowledge Acquisition: A Unified Approach to Concept Representation, Classification, and Learning, Academic Press (1989)

Bareiss, E., Porter, B. Protos: An exemplar-based learning apprentice. In: Proceedings of the Fourth International Workshop on Machine Learning. Morgan Kaufmann, San Mateo, CA. (1987) 12-23

Bartels PH, Thompson D, Montironi R, Mariuzzi G, Hamilton PW. Automated reasoning system in histopathologic diagnosis and prognosis of prostate cancer and its precursors. Eur Urol. 1996;30(2):222-33. Review.

Bartels PH, Thompson D, Weber JE. Diagnostic and prognostic decision support systems. Pathologica. 1995 Jun;87(3):221-36. Review.

Barth Carmen, Matvei Tobman, Ntscher Catharina, Sumann Helmut, Horsch Alexander. 2003. Fusing a Systematic and a Case-based Repository for Medical Decision Support. Medical Infomraics Europe, Saint Malo, France.

Beales PF. Anaemia in malaria control: a practical approach. Ann Trop Med Parasitol. 1997 Oct;91(7):713-8. Review.

Beck, H.W.: Language Acquisition from Cases. In: Bareiss, R. (edt.): Proceedings of a Workshop on case-based reasoning (DARPA), Washington, D.C., Morgan Kauf-mann, San Mateo, California (1991) 159-169

Begum S., Ahmed M., Funk P., Xiong N., von Scheele B.: Similarity of Medical Cases in Health Case Using Cosine Similarity and Ontology, workshop 2007

Begum S., Ahmed M., Funk P., Xiong N., von Scheele B.: Using Calibration and Fuzzification of Cases for Improved Diagnosis and Treatment of Stress workshop 2006

Begum S., Westin J., Funk P., and Daugherty M.. Induction of adaptive neuro-fuzzy inference sys-tems for investigating fluctuations in Parkinson's disease. Proceedings of 23rd Annual Workshop of the Swedish Artificial Intelligence Society. Pp 67-71 (2006)

Bell B, Bareiss R., Beckwith R., Sickle cell counselor: A prototype goal-based scenario for instruction in a museum environment, Technical Report 56, The Institute for the Learning of Sciences, Evanston, IL, 1994.

Bellazzi R., Larizza C., Magni P., and Bellazi R., Quality assessment of dialysis services through Intelligent Data Analysis and temporal data mining, Proceedings of Workshop on Knowledge Discovery from Temporal and Spatial Data, Lyon, 3-9, 2002.

Bellazzi R., Montani S., Portinale L., Riva A.: Integrating Rule-Based and Case-Based Decision Making in Diabetic Patient Management. ICCBR LNAI 1650 (1999) 386-400.

Bellazzi R., Larizza C., Lanzola G.: An http-based server for temporal abstractions. In Proc. IDAMAP'99, pages 52-62, 1999.

Bellazzi R., Larizza C., Riva A., Temporal abstractions for interpreting chronic patients monitoring data, Intelligent Data Analysis - an International Journal 2, 1998, http://www.elsevier.com/locate/ida.

Bellazzi, R., Montani, S., Portinale, L.: Retrieval in a Prototype-Based Case Library: A Case Study in Diabetes Therapy Revision. In: Smyth, B., Cunningham, P. (eds.): Proceedings of ECCBR 98, , Springer-Verlag, Lecture Notes in Artificial Intelligence 1488, Berlin, Heidelberg, New York (1995) 64-75

van Bemmel, J.H., Musen, M.A.: Handbook of Medical Informatics. Springer-Verlag, Berlin Heidelberg New York (1997)

Benyon F.H.L, Jones A.S., Tovey E.R. and Stone G., Differentiation of allergenic fungal spores by image analysis, with application to aerobiological counts, Aerobiologia 15: 211-223, 1999

Berchtold S., Keim D.A., Kriegel H.P., The X-tree: an index structure for high dimensional data, Proc, VLDB, pp. 28-39, 1996.

Bergadamo F., Gunetti D., Picardi C. User authentication through keystroke dynamics. ACM Trans. Inf. Syst. Secur., 5 (4): 367-397, 2002.

Berger J., Roentgen: Radiation therapy and case-based reasoning, In Proceedings of the Tenth Conference on Artificial Intelligence for Applications, los Alamitos, CA, 1994. IEEE Computer Society Press. pp. 171-177.

Berger J. ROENTGEN: case-based reasoning and radiation therapy planning. Proc Annu Symp Comput Appl Med Care. 1992;:210-4.

Berger J., Roentgen: a case-based approach to radiation therapy planning. In Proc. Workshop on Case-Based Reasoning, pages 218-223. Morgan Kaufman, San Mateo, CA, 1989.

Bergmann, R., Wilke, W.: Towards a new formal model of transformational adaptation in case-based reasoning. In: Gierl, L., Lenz, M. (eds..): Proc of 6th German Workshop on CBR, University of Rostock (1998) 43-52

Berners-Lee, T., Hendler, J., Lassila, D.: The Semantic Web. Scientific American. May (2001)

Berntson, G.G., Cacioppo, J.T., Quigley, K.S.: Respiratory sinus arrhythmia: Autonomic origins, psychological mechanisms, and psychophysiological implications. Psychophysiology 30 (1993) 183-196

Bichindaritz, I.: Case-based reasoning in the health sciences. Artificial Intelligence in Medicine 36(2) (2006) 121-125

Bichindaritz, I., Marling, C.: Case-based reasoning in the health sciences: Whats next? Artificial Intelligence in Medicine 36(2) (2006) 127-135

Bichindaritz, I.: Memoire: A framework for semantic interoperability of casebased reasoning systems in biology and medicine. Artificial Intelligence in Medicine 36(2) (2006) 177-192

Bichindaritz, I., Marling, C.: Introduction to the special issue on case-based reasoning in the health sciences. Computational Intelligence 22(3-4) (2006) 143-147

Bichindaritz, I.: Memory organization as the missing link between case-based reasoning and information retrieval in biomedicine. Computational Intelligence 22(3-4) (2006) 148-160

Bichindaritz I., Prototypical Case Mining from Medical Literature, workshop 2006

Bichindaritz I. and Marling C. Second workshop on Case-Based Reasoning in the health sciences, ICCBR 2005. DePaul University, Chicago, 2005.

Bichindaritz I. and Marling C. Second workshop on Case-Based Reasoning in the health sciences. ECCBR 2004, Technical Report 142-04. Departamento Sistemas Informaticos y Programacion, Universidad Complutense de Madrid, Madrid, 2004.

Bichindaritz I., Marling C.: Case-based Reasoning in the Health Sciences: What's Next?, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2004 p. ?

Bichindaritz, I.: Memoire: Case Based Reasoning Meets the Semantic Web in Biology and Medicine. In: Funk, P., Gonzalez Calero, P.A. (eds.): Proceedings of ECCBR 2004, Springer-Verlag, Lecture Notes in Artificial Intelligence 3155, Berlin, Heidelberg, New York (2004) 47-61

Bichindaritz I. : Semantic Interoperability of Case-Based Reasoning Systems in Biology and Medicine, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ICCBR 2004 p. 5-14

Bichindaritz, I.: Semantic interoperability of case based reasoning systems in biology and medicine. In: Workshop proceedings of the 7th European Conference on Case Based Reasoning, ECCBR'04 (2004) 5-14

Bichindaritz, I. Semantic Interoperability of Case Based Reasoning Systems in Biology and Medicine. In: European Conference on Case Based Reasoning Workshop Proceedings. Madrid, Spain (2004) in press

Bichindaritz I.: Solving Safety Implications in a Case-Based Decision-Support System, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003 p.?

Bichindaritz, I., Solving Safety Critical Issues in a Case Based Reasoning System in Medicine. In: International Conference on Case Based Reasoning Workshop Proceedings. (ICCBR-03), Workshop on CBR in the Health Sciences, Trondheim, Norway. (2003) 9-18

Bichindaritz I., Moinpour C., Kansu E., Donaldson G., Bush N., and Sullivan K.M. Case based reasoning for medical decision-support in a safety critical environment. Artificial Intelligence in Medicine 2780:314 -323, November 2003.

Bichindaritz I, Sullivan KM, Generating Practice Cases for Medical Training from a Knowledge-Based Decision-Support System, 6th European Conference on Case Based Reasoning Workshop Proceedings,Workshop on Case-Based Reasoning in Education, Aberdeen, Scotland, (2002) 3-14

Bichindaritz I, A Multimodal Case-Based Reasoning System to Support Long-Term Follow-Up Care over the Internet, RaPC (Raisonnement a Partir de Cas), 1999, 1-6

Bichindaritz I, Sullivan KM, Reasoning from Knowledge Supported by More or Less Evidence in a Computerized Decision Support System for Bone-Marrow Post-Transplant Care, AAAI Spring Symposium; Stanford, 1998, 85-90 ;

Bichindaritz I, Kansu E, Sullivan KM, Case-Based Reasoning in CARE-PARTNER: Gathering Evidence for Evidence-Based Medical Practice, European Workshop on Case-Based Reasoning, SPRINGER-VERLAG Lectures Notes in Artificial Intelli-gence n 1488,(1998) 334-345

Bichindaritz, I., Kansu, E., Sullivan, K.M.: Integrating Case-Based Reasoning, Rule-Based Reasoning and Information Retrieval for Medical Problem-Solving. In: AAAI Workshop on CBR Integrations. Madison, WI. AAAI Press, (1998) 122-127

Bichindaritz I., Siadak M. F, Jocom J., Moinpour C., Kansu E., Donaldson G, Bush N, Chapko M., Bradshaw J. M., Sullivan K. M. CARE-PARTNER: a Computerized Knowledge-Support System for Stem-Cell Post-Transplant Long-Term Follow-Up on the World-Wide-Web, Journal of American Medical Informatics Association (JAMIA): 386-390, Suppl. for AMIA'98 Annual Symposium. (1998)

Bichindaritz I., Bone-marrow post-transplant care application of data mining, In ACM SIGBIO, Special Issue on Biomedical Applications of Knowledge Discovery and Data Mining, December 1998, Volume 18, Number 3, 3 ;

Bichindaritz I., Kansu E, Sullivan K.M.: Case-Based Reasoning in CARE-PARTNER: Gathering Evidence for Evidence-Based Medical Practice. In: European Workshop on Case-Based Reasoning. Lectures Notes in Artificial Intelligence. Springer-Verlag, Berlin Heidelberg, New York (1998), LNAI 1488, 334-459. 10. 11.

Bichindaritz I., Temporal Reasoning and Learning from Cases for Patients Follow-up, ITCH-96 , 1996

Bichindaritz I., MNAOMIA: Improving case-based reasoning for an application in psychiatry, In Artificial Intelligence in Medicine: Applications of Current Technologies, Stanford, CA, 1996. Working Notes of the AAAI-96 Spring Symposium.

Bichindaritz, I.: Mnaomia: Improving case-based reasoning for an application in psychiatry. In: Artificial Intelligence in Medicine: Applications of Current Technologies, AAAI 14-20 (1996)

Bichindaritz I., MNAOMIA: Reasoning and Learning from Cases of Eating Disorders in Psychiatry, SCAMC-96; AMIA, Washington D.C., 1996, 965 ;

Bichindaritz I.: From cases to classes: Focusing on abstraction in case-based reasoning. In: Burkhard, H.-D., Lenz, M. (eds.): Proc of 4th German Workshop on CBR, Humboldt University Berlin (1996) 62-69

Bichindaritz, I.: Case-Based Reasoning and Conceptual Clustering : For a Co-operative Approach. In: Watson, I., Fahrir, M. (eds.): Lecture Notes in Artificial Intelligence 1020. Springer-Verlag, Berlin, Heidelberg, New York (1995) 91-106

Bichindaritz I., Case-Based Medical Multi-expertise: an Example in Psychiatry , Artificial Intelligence in Medicine Europe, Barahona P., Stefanelli M. and Wyatt J. (Edts), Pavia, SPRINGER-VERLAG Lecture Notes in Artificial Intelligence no 934, 1995, 395-396

Bichindaritz, I.: Case-Based Reasoning adaptive to several cognitive tasks. In: Aamodt A., Veloso M. (eds): International Conference on Case-Based Reasoning. Lecture Notes in Artificial Intelligence, Vol. 1010. Springer-Verlag, Berlin Heidelberg, New York (1995) 391-400

Bichindaritz I. and Mirabel-Sarron C., An Artificial Intelligence Methodology for Assisting Cognitive Therapy in Psychiatry, Information Technology Issues in Community Health Care, Victoria, Canada, 1994, 12.2-12-6

Bichindaritz I., A Case-Based Assistant for Clinical Psychiatry Expertise, Journal of the American Medical Informatics Association. Symposium Supplement. 18th Annual Symposium on Computer Applications in Medical Care (SCAMC), Washington D.C., November 1994, 673-677

Bichindaritz I., Case-based Reasoning in Psychiatry: A Tool to Assist Diagnosis, Treatment and Research, Neural Networks and Expert Systems in Medicine and Healthcare, Plymouth, 1994, 477-484

Bichindaritz I., Case-Based Reasoning in Psychiatry, First World Congress on Computational Medicine, Public Health and Biotechnology, Austin, 1994

Bichindaritz, I., Seroussi, B.: Contraindre l'Analogie par la Causalite. Technique et Sciences Infor-matiques. Vol. 11, N. 4 (1992) 69-98

Bilska-Wolak, A.O., Jr. Floyd, C.E.: Development and evaluation of case-based reasoning classifier for prediction of breast biopsy outcome with BI-RADS lexicon. Med Phys, vol. 29-9 (2002 sep) 2090-100.

BioPassword. Faq, 04, 2005. http://www.biopassword.com/bp2/products/b-identified-pro/faqs.asp

Birney, E. et al. (2004). An Overview of Ensembl. Genome Research, 14: 925-928.

Bolle R., Connell J., Pankanti S., Ratha N., Senior A. Guid to biometrics. Springer, page 364, 2004.

Bonissone P.P. and Cheetham W., Financial Applications of Fuzzy Case-Based Reasoning to Residential Property Valuation, Proceedings of the 6th IEEE International Conference on Fuzzy Systems.. Vol. 1(1997) 37-44;

Borgefors G., Hierarchical Chamfer Matching: A Parametric Edge Detection Algorithm, IEEE Transactions on Pattern Analysis and Machine Intelligence 10(6), 1988, p. 848-865

Borst F, Appel R, Baud R, Ligier Y, Scherrer JR. Happy birthday DIOGENE: a hospital information system born 20 years ago. Int J Med Inf. 1999 Jun;54(3):157-67.

Borst F, Lovis C, Thurler G, Maricot P, Rossier P, Revillard C, Scherrer JR. Happy birthday DIOGENE: a hospital information system born 20 years ago. Medinfo. 1998;9 Pt 2:922-6.

Borst F, Thurler G, Breant C, Lehner-Godinho B, Calmy A, Meier C. Finding similar cases within a hospital information system. Stud Health Technol Inform. 2000;77:875-9.

Bradburn C. and Zeleznikow, The application of case-based reasoning to the tasks of health care planning, In S. Wess, K.D. Althoff, and M. M. Richter, editors, Topics in Case-Based Reasoning: First European Workshop, EWCBR-93, pages 365-378, Berling, 1994, Springer-Verlag.

Bradburn C, Zeleznikow J, Adams A. FLORENCE: synthesis of case-based and model-based reasoning in a nursing care planning system. Comput Nurs. 1993 Jan-Feb;11(1):20-4.

Bradley, F.: Putting Fun into Function with QiuzMed - an Interactive Medical Application, In Proceedings of CBMS 2005, Eighteenth IEEE Symposium on Computer-Based Medical Systems, (2005) 226-231

Branting, K.L.: Stratified Case-Based Reasoning in Non-Refinable Abstraction Hier-achies, In: Leake, D., Plaza, E. (eds.): Proceedings of ICCBR 97, Springer-Verlag, Lecture Notes in Artificial Intelligence 1266, Berlin, Heidelberg, New York (1997) 519-530

Branting L.K. and Porter B.W. Rules and precedents as complementary warrants. In: Proc. Of 9th National Conference on Artificial Intelligence, Anaheim, CA, USA, July 1991. AAAI Press.

Branting L.K. Techniques for the retrieval of structured cases. In Working Notes of the AAAI Spring Symposium on Case-Based Reasoning, Palo Alto, CA, 1990.

Brenner, S. (2002). Ontology Recapitulates Philology. The Scientist, 16(6):12.

Brezillon, P.: Context in Problem Solving: A survey, The Knowlege Engineering Review, Vol. 14(1), (1999) 1-34

Brin, S., Page L.: The anatomy of a large-scale hypertextual web search engine. Computer Networks and ISDN Systems, Vol. 30, N. 1-7 (1998) 107-117

Broswe, A.: Strategies for efficient incremental nearest neighbor search. Pattern Recognition 23 (1990) 171-178

Brown L.G., A Survey of Image Registration Techniques, ACM Computer Surveys 24 (4), 1992, pp. 325-376

Bruce A., and Gao H. Applied Wavelet Analysis with S-Plus, Springer-Verlag, New York, (1996)

Brunak, S.; Engelbrecht, J.; and Knudsen, S. 1997. Prediction of human mRNA donor and acceptor sites from the DNA sequence. Journal of Molecular Biology 220:49-65.

Buchanan, B. G., Shortliffe, E.H.: Rule-Based Expert Systems: MYCIN Experiments of the Stanford Heuristic Programming Project, Addison-Wesley (1984)

Budzik, J., Hammond, K.J.: \ User Interactions with Everyday Applications as Context for Just-in-Time Information Access, In Proceedings of IUI-00 (2000)

Bull M., Kundt G. und Gierl L.: Case-Based Reasoning and Statistics for Discovering and Forecasting of Epidemics. In: Keravnou E. et al. (Hrsg.): Artificial Intelligence in Medicine, AIME`97, Springer, Berlin, 1997, 513-516

Burden, G. (July, 1996) Imperial The Gene. Medical The Post. http://www.mentalhealth.com/mag1.

Burge, C., and Karlin, S. 1997. Prediction of complete gene structures in human genomic DNA. Journal of Molecular Biology 268:78-94.

Burset, M., and Guigo, R. 1996. Evaluation of gene structure prediction programs. Genomics 34:353-367.

Buttler D, Coleman M., Critchlow T., Fileto R., Han W., Liu L, Pu C., Rocco D., Xiong L.: Querying Multiple Bioinformatics Information Sources: Can Semantic Web Research Help? In: Meersman R., Sheth A. (eds): Special Issue on Semantic Web and Data Management. SIGMOD Re-cord. Vol. 31, 4 (2002) 59-64.

Callan, R.: Artificial Intelligence. Palgrave Macmillan (2003).

Camargo, K.; The, M. A.; Weber, R.; Martins, A.; Barcia, R.: Designing Nutritional Pro-grams with Case-Based Reasoning. In Proceedings of the Sixth German Workshop on Case-Based Reasoning-Foundations, Systems, and Applications, 141-147 (1998)

Camm John A., et al: Heart rate variability: Standards of measurement, physiological interpretation, and clinical use. European Heart Journal. Vol 17, pp. 354-381 (1996).

Card S.K., Moran T.P., Newell A. The keystroke-level model for use performance time with interactive systems. Commun. ACM, 23(7):396-410, 1980.

Caruana, R., H. Kangarloo, J. David N. Dionisio, U. Sinha, D. Johnson. 1999. Case-Based Explanation of Non-Case-Based Learning Methods. Proc AMIA Symp. 1999

Cassidy, D., Carthy, J., Drummond, A., Dunnion, J, Sheppard, J.: The Use of Data Mining in the Design and Implementation of an Incident Report Retrieval System, Proceedings of the Systems and Infor-mation Engineering Design Symposium (2003)

Cendrowska, J.: PRISM: an Algorithm for Inducing Modular Rules. International Journal of Man-Machine Studies 27 (1987) 349-370

Chae YM, Park KS, Park Q, Bae MY. Development of medical decision support system for leukemia management. Medinfo. 1998;9 Pt 1:449-52.

Champion JD, Artnak K, Shain RN, Piper J. Rural woman abuse and sexually transmitted disease: an ethical analysis of clinical dilemmas. Issues Ment Health Nurs. 2002 Apr-May;23(3):305-26.

Chan K.P., Fu A.W.C., Efficient time series matching by wavelets, ICDE, pp. 126-133, 1999.

Chang, C.-L., Cheng, B.-W., Su, J.-L.: Using Case-Based Reasoning to Establish a Continuing Care Information System of Discharge Planning. Expert Systems with Applications, 26: 601-613 (2004)

Chang C.-L., Finding Prototypes for Nearest Neighbor Classifiers, IEEE Trans. on Computers, vol C-23, No. 11, p. 1179-1184.

Cheetham, W.: A Mixed-Initiative Call Center Application for Appliance Diagnostics. AAAI-05 Fall Symposium on Mixed-Initiative Problem-Solving Assistants. AAAI/MIT Press (2005)

Cheetham, W., Price, J.: Measures of solution accuracy in case-based reasoning systems. In Funk, P., Gonzalez-Calero, P.A., eds.: Advances in Case-Based Reasoning, 7th European Conference, ECCBR 2004, Madrid, Spain, August 30 - September 2, 2004, Proceedings. Volume 3155 of Lecture Notes in Computer Science., Springer (2004) 106-118

Cheetham, W.: Case-based reasoning with confidence. In Blanzieri, E., Portinale, L., eds.: Advances in Case-Based Reasoning, 5th European Workshop, EWCBR 2000, Trento, Italy, September 6-9, 2000, Proceedings. Volume 1898 of Lecture Notes in Computer Science., Springer (2000) 15-25

Chowdhury S, Lindqvist K, Ahlgren M, Timpka T. Knowledge discovery and case based reasoning in health promotion: development of a help-desk for prevention of occupational injuries. Medinfo. 1998;9 Pt 1:513-6.

Corchado JM, Corchado ES, Aiken J et al.: Maximum likelihood Hebbian learning based retrieval method for CBR systems. In: Ashley KD, Bridge DG (eds.): Proceedings International Conference on Case-based Reasoning, ICCBR 2003, Springer-Verlag, Berlin (2003) 107-121

Coifman R. and Wickerhauser V., Entropybased Algorithms for Best basis Selection, IEEE Trans-actions on Information Theory, 38(2):713-718, (1992)

Coifman R., Meyer Y., Wickerhauser V. Wavelet Analysis and Signal Processing, Wavelets and Their Applications, Jones and Bartlett Publishers, Boston (1992)

Cohen, B.A., Lehmann C.U.: Dermatology Image Atlas: Dermatology Images, Available at http://dermatlas.med.jhmi.edu/derm/ (2004)

Cohen, K., Hu, Y., Tompkins, W., Webster, J.: Breath detection using a fuzzy neural network and sensor fusion. In: Proceedings of the International Conference on Acoustics, Speech, and Signal Processing, ICASSP-95, IEEE (1995) 3491-3494

Colilla M, Fernandez CJ, Ruiz-Hitzky E. Case-based reasoning (CBR) for ulticomponent analysis using sensor arrays: application to water quality evaluation. Analyst. 2002 Dec;127(12):1580-2.

Corchado JM, Corchado ES, Aiken J et al.: Maximum likelihood Hebbian learning based retrieval method for CBR systems. In: Ashley KD, Bridge DG (eds.): Proc ICCBR 2003, Springer, Berlin (2003) 107-121

Costello E, and Wilson D.C., A Case-Based Approach to Gene Finding, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, Trondheim, Norway, p 19-28.

Costello, E., Wilson, D.C. A Case-Based Approach to Gene Finding. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 19-28

Cox K. Stories as case knowledge: case knowledge as stories. Med Educ. 2001 Sep;35(9):862-6.

Coyle, L., Doyle, D., Cunningham, P.: Representing similarity for CBR in XML. In Calero, P.A.G., Funk, P., eds.: Advances in Case-Based Reasoning, 7th European Conference on Case-Based Reasoning, ECCBR 2004. Volume 3155., Madrid, Spain, Springer (2004) 119-127

Cormen, T. H.; Leiserson, C. E.; and Rivest, R. L. 1992. Introduction to Algorithms. MIT Press.

Cowen M. J., Kogan H., et al: Power spectral analysis of heart rate variability after biofeedback training, Journal of Electrocardiology, 23, pp. 85-94 (1990).

Craw S., Wiratunga N., Rowe R.: Case-based design for tablet formulation. In Proceedings of the 4th European Workshop on Case-Based Reasoning, pages 358-369, Dublin, Ireland, 1998. Springer.

Cruz, I.F., Decker, S., Euzenat, J., McGuinness, D.: Foreword. In: Cruz, I.F., Secker, S., Euzenat, J., McGuinness, D. (eds.): First Semantic Web Working Symposium. Stanford (2001) 1

Curcio G., Casagrande M., Bertini M.: Sleepiness: Evaluating and Quantifying Methods. International Journal of Psychophysiology 41 (2001) 251-263.

Czogala E., Leski J.: Entropy and Energy Measures of Fuzziness in Ecg Signal Processing. In: Szczepaniak P, Lisboa P, Kacprzyk J, (eds). Fuzzy Systems in Medicine. Heilderberg: Springer-Vergas (2000) 227-245.

dAquin, M., Lieber, J., Napoli, A.: Adaptation knowledge acquisition: A case study for case-based decision support in oncology. Computational Intelligence 22(3-4) (2006) 161-176

Daniels, J.J., Rissland, E.L.: A Case-Based Approach to Intelligent Information Retrieval. In: Proceedings of SIGIR 95. ACM Press, New York, NY (1995) 238-245

Davidson AM, Cameron JS, Grunfeld J-P et al. (eds.): Oxford Textbook of Nephrology, Volume 3. Oxford University Press (2005)

Davidson R.J.: Cerebral asymmetry and affective disorders: A developmentalperspective. In: Cicchetti D., Toth. S.L. (Eds): Internalizing and externalizing expressions of dysfunction. Rochester Symp. on Developmental Psychopathology, Vol. 2. Hillsdale, NJ. (1991) 123-133

Davis G, Wiratunga N., Taylor B., and Craw S. : Matching SMARTHOUSE Technology to Needs of the Elderly and Disabled, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, p?

Davis, G., Wiratunga, N., Taylor, B., Craw, S. Matching SMARTHOUSE Technology to Needs of the Elderly and Disabled. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 29-38

Davis, R., Buchanan, B.: Meta level knowledge. In Hayes-Roth, F., Waterman, D.A., Lenat, D.B., eds.: Rule-Based Expert Systems. Addison-Wesley, London (1985) 507-530

Darpa Agent Markup Language (DAML). http://www.daml.org

Davies D.L., and Bouldin D.W., A cluster separation measure, IEEE Transactions on Pattern Analysis and Machine Intelligence, Vol. 1, No. 2, pp. 224-227, 1979.

Davies, J., Glasgow, J., Kuo, T.: Visio-spatial case-based reasoning: A case study in prediction of protein structure. Computational Intelligence 22(3-4) (2006) 194-207

DeGroot, L.J.: Thyroid Physiology and Hypothyroidsm. In: Besser, G.M., Turner, M. (eds): Clinical endocrinilogy. Wolfe, London, (1994) (Chapter 15)

Delany, S.J., Cunningham, P., Doyle, D.: Generating estimates of classification confidence for a case-based spam filter. In: to appear 5th International Conference on Case-Based Reasoning. (2005)

Delany S.J., Cunningham P., An Analysis of Case-Base Editing in a Spam Filtering System. ECCBR 2004 128-141

Dempster, A. P.: Upper and Lower Probability Induced by a Multi-Valued Mapping. Annals of Mathematical Statistics (1967) 38: 325-339.

Deutsch T. Electronic medical consultation. Orv Hetil. 1997 Jun 8;138(23):1515-7. Hungarian.

Dewsbury, G., Bonner, S., Taylor, B., Edge, M.: Final Evaluation of Tools Developed. CUSTODIAN Project, CUSTODIAN/RGU/WP7.3/RE/004 Vb, EU Telematics Initiative for Disabled and Elderly People (TIDE), DE4004, 2001

The Diabetes Control and Complication Trial Research Group. The effect of intensive treatment of diabetes on the development and progression of long-term complications in insulin-dependent diabetes mellit us. The New England Journal of Medicine, 329:977-986, 1993.

Diaz, F., Fdez-Riverola, F., M.Corchado, J.: gene-cbr: A case-based reasonig tool for cancer diagnosis using microarray data sets. Computational Intelligence 22(3-4) (2006) 254-268

Diaz-Agudo, B., Gonzalez-Calero, P.: Classification Based Retrieval Using Formal Concept Analysis. In: Aha, D., Watson, I. (eds.): Proceedings of ICCBR 01, Springer-Verlag, Lecture Notes in Artificial Intelligence 2080, Berlin, Heidelberg, New York (1995) 173-188

Diaz-Agudo, B., Gervaz, P., Gonzalez-Calero, P.: Adaptation Guided Retrieval Based on Formal Concept Analysis. In: Ashley, K., Bridge, D.G. (eds.): Proceedings of ICCBR 03, Springer-Verlag, Lecture Notes in Artificial Intelligence 2689, Berlin, Heidelberg, New York (1995) 131-145

Dickson J. Algoritm for keystroke dynamics inspiredad av viktad sannolikhet och fuzzy logic. Master thesis Hogskolan Skovde, 2004.

Dinh P.T., Perrault H. ,Calabrese P., Eberhard A., and Gila Benchetrit G. New statical method for detection and quantification of respiratory sinus arrhythmia. IEEE Transactions on Biomedical Engineering 46(9):1161 -1165, September 1999

Dorge Th., Carstensen J.M., Frisvad J.C., Direct identification of pure Penicillium species using image analysis, Journal of Microbiological Methods, 41 (2000), p.121-133.

Dorre, J., Gerstl, P., Seiffert, R.: Text mining: finding nuggets in mountains of textual data. In: Chaudhuri, S., Madigan, D., and Fayyad, U. (eds.): Proceedings of the fifth ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. ACM press, New York (1999) 398-401

Doyle, D. Cunningham, P., Walsh, P.: An evaluation of the usefulness of explanation in a case-based reasoning system for decision support in bronchiolitis treatment. Computational Intelligence 22(3-4) (2006) 269-281

Doyle, D., Loughrey, J., Nugent, C., Coyle, L., Cunningham, P.: Fionn: A frame-work for developing CBR systems. Expert Update 8 (2005) 11-14 To Appear in Expert Update.

Doyle, D., Cunningham, P., Bridge, D., Rahman, Y.: Explanation oriented retrieval. In P.Funk, Calero, P., eds.: Advances in Case-Based Reasoning (Procs. of the Seventh European Conference on Case-Based Reasoning), Springer (2004) 157-168

Dryden I.L., and K.V. Mardia K.V., Statistical Shape Analysis, John Wiley&Sons, 1998

Dubois D., Prade H. Evesta F., Garcia P., Godo L., Lopez de Mantaras R.: Fuzzy Set Modelling in Case-Based Reasoning International Journal of Intelligent Systems 13 (1998) 345-373.

Dunn J.C., Well separated clusters and optimal fuzzy partitions, J. Cybern. Vol. 4, pp. 95-104, 1974.

Dvir G., Langholz G., Schneider M. Matching attributes in a fuzzy case based reasoning. Fuzzy Information Processing Society, 33-36. (1999)

El Balaa, Z. & Traphoner R., 2003 Case-Based Decision Support and Experience Management for Ultrasonography. Second German Workshop on Experience Management (GWEM 2003).

El Balaa Z., Strauss A., Uziel P., Maximini K., and Traphoner R. :FM-Ultranet: a Decision Support System using Case-Based Reasoning Applied to Ultrasonography, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003. p37-44.

El Balaa, Z., Strauss, A., Uziel, P., Maximini, K., Traphoner, R. FM-Ultranet: a Decision Support System using Case-Based Reasoning Applied to Ultrasonography. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 39-48

El-Gamel, S. et al. (1993) Case-based algorithms applied in a medical acquisition tool. Medical Informatics - Medicine Et Informatique, 18(ii), p.149-62.

Elstein, A., Schulman, L., Sprafka, S.: Medical Problem Solving: An Analysis of Clinical Reasoning. Harvard University Press, Cambridge, Massachusetts (1978)

Evans CD. A case-based assistant for diagnosis and analysis of dysmorphic syndromes. Med Inform (Lond). 1995 Apr-Jun;20(2):121-31.

Evans-Romaine K., and Marling C. :Prescribing Exercise Regimens for Cardiac and Pulmonary Disease Patients with CBR, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, p?

Evans-Romaine, K., Marling, C. Prescribing Exercise Regimens for Cardiac and Pulmonary Disease Patients with CBR. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 49-58

Farber, R.; Lapedes, A.; and Sirotkin, K. 1992. Determination of eukaryotic protein coding regions using neural networks and information theory. Journal of Molecular Biology 226:471-479.

Fathi-Torbaghan M, Meyer D. MEDUSA: a fuzzy expert system for medical diagnosis of acute abdominal pain. Methods Inf Med. 1994 Dec;33(5):522-9.

Fayyad, U., Piatetsky-Shapiro, G. and Smyth, P.: From data mining to knowledge discovery. In Advances in Knowledge Discovery and Data Mining, MIT Press 1-36 (1996)

Fenstermacher, Kurt D. 1996. An Application of Case-based Instruction in Medical Domains. In Proceedings of the 1996 Spring Symposium on Artificial Intelligence in Medicine. Cambridge, MA: AAAI Press/The MIT Press

Ferrer Salvans P, Alonso Valles L. An epidemiologic approach to computerized medical diagnosis--AEDMI program. Comput Biol Med. 1990;20(6):433-43.

Finin, T., Joshi, A.: Agents, Trust, and Information Access on the Semantic Web. In: Meersman, R., Sheth, A. (eds.): Special Issue on Semantic Web and Data Management. SIGMOD Record. Vol. 31, Issue 4 (2002) 34-38

Fisher, MR; Shaver, S; Grasel, C; Bachering, T; Handl, H; Gartner, R; Scherbau, W; Scriba, PC., (1996) Casus-Model Trial: To Computer-Assisted Author for System Problem Oriented Learning in Medicine. Z-Artiz-Forbild-Jena, Aug 90[5]:385-9.

Fisher D. and Langley P., Approaches to conceptual clustering, Proceedings of the Ninth International Joint Conference on Artificial Intelligence, pp. 691-697, Los Angeles, 1985.

Fleiss J: The design and analysis of clinical experiments. John Wiley & Sons, 1986

Flemons W.W., Littner M.R., Rowley J.A., Gay P., Anderson W.M, Hugdel D.W., McEvoy R.D., Loube D.I.: Home Diagnosis of Sleep Apnea: A Systematic Review of the Literature. Chest 124 (2003) 1543-1579.

Flickner, M., Sawhney, H., Ashley, J., Huang, Q., Dom, B., Gorkani, M., Hafner, J., Lee, D., Petkovic, D., Steele, D., Yanker, P.: Query by image and video content: The QBIC system, IEEE Computer Vol. 28(9), (1995) 23-32

Flor-Henry P.: Cerebral Basis of Psychopathology.John Wright.PSG.Inc. Boston, Bristol, London (1983)

Floyd CE Jr, Lo JY, Tourassi GD. Case-based reasoning computer algorithm that uses mammographic findings for breast biopsy decisions. AJR Am J Roentgenol. 2000 Nov;175(5):1347-52.

Friedman, C., Kra, P., Yu, H., Krauthammer, M., Rzhetsky, A.: GENIES: a natural-language processing system for the extraction of molecular pathways from journal articles. Bioinformatics 17, Suppl 1 (2001) S74-S82

Fritsche L, Schlaefer A, Budde K, Schroeter K, Neumayer HH. Case-based reasoning algorithm for kidney transplant monitoring. Transplant Proc. 2001 Nov-Dec;33(7-8):3331-3.

Fritsche L, Schlaefer A, Budde K, Schroeter K, Neumayer HH. Recognition of critical situations from time series of laboratory results by case-based reasoning. J Am Med Inform Assoc. 2002 Sep-Oct;9(5):520-8.

Frize M, Solven FG, Stevenson M, Nickerson B, Buskard T, Taylor K. Computer-assisted decision support systems for patient management in an intensive care unit. Medinfo. 1995;8 Pt 2:1009-12.

Frize M, Walker R. Clinical decision-support systems for intensive care units using case-based reasoning. Med Eng Phys. 2000 Nov;22(9):671-7.

Frize M, Wang L, Ennett CM, Nickerson BG, Solven FG, Stevenson M. New advances and validation of knowledge management tools for critical care using classifier techniques. Proc AMIA Symp. 1998;:553-7.

Fuchs, B., Mille, A.: A knowledge-level task model of adaptation in case-based reasoning. In: Althoff, K.-D. et al. (eds.): Case-Based Reasoning Research and Development, Proc of 3rd Int Conference, Springer Berlin (1999) 118-131

Fuller, S., Revere, D., Bugni, P., Martin, G.M.: A knowledgebase system to enhance scientific dis-covery: Telemakus. Biomed Digit Libr. Sep 21;1(1):2 (2004)

Funk, P., Xiong, N.: Case-based reasoning and knowledge discovery in medical applications with time series. Computational Intelligence 22(3-4) (2006) 238-253

Funk P., Nilsson W., Xiong N.: Knowledge Discovery and Case-Based Reasoning in Medical Application with Time Series, In Proc. of the Third workshop on Case-Based Reasoning in the health sciences, ICCBR, 2005, pages 42-51. DePaul University, Chicago 2005. workshop 2005

Galperin, M. Y. (2005). The Molecular Biology Database Collection: 2005 Update. Nucleic Acids Research, 33:D5-D24.

Gediga G. Duntsch I. Maximum Consistency of Incomplete Data via Non-Invasive Imputation. Artificial Intelligence Review 19 (1) (2003) 93-107

Gelder M.G., Lopez-Ibor U., Andeasen N.C. (eds.): New Oxford Textbook of Psychiatry. Oxford, Oxford University Press (2000)

Gene Cards, www.genecards.com

Gierl, L., Bull, M, Schmidt, R.: CBR in Medicine. In: Lenz, M. et al. (eds.): Case-Based Reasoning Technology, From Foundations to Applications, Springer Berlin (1998) 273-297

Gierl L., Pollwein B., Wolter M., Schmidt R.: Focusing on Resistance Development in a Case-Based Teleconsultation System for Antibiotics Therapy Advice. In: Cesnik et al. (Eds.): MEDINFO'98, Amsterdam, 1998, 549-553

Gierl, L., Stengel-Rutkowski, S.: Integrating consultation and semi-automatic knowledge acquisition in a prototype-based architecture: Experiences with Dysmorphic Syndromes. Artificial Intelligence in Medicine 6 (1994) 29-49

Gierl L. ICONS: Cognitive basic functions in a case-based consultation system for intensive care. In Andreassen S et al., eds., Proceedings of Artificial Intelligence in Medicine. Pp.230-236, (1993)

Gissel A, Knauth P. Knowledge-based support for the participatory design and implementation of shift systems. Scand J Work Environ Health. 1998;24 Suppl 3:88-95.

Glasgow, J., Jurisica, I.: Integration of Case-Based and Image-Based Reasoning. Proceed-ings of AAAI Workshop on Case-Based Reasoning Integration, Madison, (july 1998)

Goble, C. A., (2001). Transparent access to multiple bioinformatics information sources. IBM Systems Journal, 40(2).

Goldin D.Q., Kanellakis P.C., On similarity queries for time-series data: constraint specification and implementation, Proc. 1st Int. Conf. on the principles and practice of constraints programming, pp. 137-153, LNCS 976, 1995.

Grandjean, H., Laroque, D., Levi, S.: The performance of routine ultrasonographic screening of pregnancies in the Eurofetus Study. Am J Obstet Gynecol, Mosby, Vol. 181-2 (1999) 446-54

Grimnes, M. J. F. (1998). ImageCreek: A knowledge level approach to case-based image representation. Norwegian University of Science and Technology, Dept. of Information and Computer Science, PhD Dissertation.

Grimnes, M. & Aamodt, A.(1996). A two layer case-based reasoning architecture for medical image understanding, In I. Smith & B. Faltings (Eds.) Advances in Case-Based Reasoning (pp. 164-178). Berlin: Springer Verlag.

Grimnes M. and A degard (1996). Knowledge depth in CT image diagnosis http://home.no.net/yarc/papers/kbcs96.html

Gupta S.K., Rao K.S., and Bhatnagar V., K-means Clustering Algorithm for Categorical Attributes. In M.K. Mohania and A. Min Toja (Eds.) Proceedings of the First International Conference on Data Warehousing and Knowledge Discovery, pp. 203-208, Springer Verlag, lncs 1676, 1999.

Gupta K.M., Montazemi A.R.: Empirical Evaluation of Retrieval in Case-Based Reasoning Systems Using Modified Cosine Matching Function, IEEE transactions on systems, man, and cyberneticspart a: systems and humans, vol. 27, no. 5 (1997).

Guttman A., R-trees: a dynamic index structure for special searching, Proc. ACM SIGMOD, pp. 47-57, 1984.

Grutter, R., Eikemeier, C.: Development of a Simple Ontology Definition Language (SontoDL) and Its Application to a Medical Information Service on the World Wide Web. In: Cruz, I.F., Secker, S., Euzenat, J., McGuinness, D. (eds.): First Semantic Web Working Symposium. (2001) 587-597

Haddad, M. Adlassnig, K. P & G. Porenta: Feasibility analysis of a case-based reasoning system for automated detection of coronary heart disease from myocardial scintigrams. Artificial Intelligence in Medicine, Volume 9, Number 1, January 1997 61-78

Hai GA: Logic of diagnostic and decision making in clinical medicine. Politheknica publishing, St. Petersburg (2002)

Han, J., Kamber, M.: Data mining concepts and techniques, first edition. Morgan Kaufmann, San Mateo, CA (2000)

Hamilton PW, Bartels PH, Anderson N, Thompson D, Montironi R, Sloan JM. Case-based prediction of survival in colorectal cancer patients. Anal Quant Cytol Histol. 1999 Aug;21(4):283-91.

Hampel, R.: Diagnostik und Therapie von Schilddrusenfunktionsstorun-gen.UNIMED,Bremen (2000)

Hearst, M.A.: Untangling Text Data Mining. In: Dale, R., Church, K. (eds.): Proceedings of the 37th An-nual Meeting of the Association for Computational Linguistics. Association for Computational Linguistics, Morristown, NJ, (1999) 3-10

Heindl B., Schmidt R., Schmid G., Haller M., Pfaller P., Gierl L. und Pollwein B.: A Case-Based Consilarius for Therapy Recommendation (ICONS): Computer-Based Advice for Calculated Antibiotic Therapy in Intensive Care Medicine. Computer Methods and Programms in Biomedicine 52, 1997, 117-127

Hennessy D.N., Buchanan B.G, Rosenberg J.M., Bayesian Case Reconstruction. ECCBR 2002 148-158

Hetland M.L., A survey of recent methods of efficient retrieval of similar time sequences, in: M. Last, A. Kandel, H. Bunke, eds., Data Mining in Time Series Databases, World Scientific, 2003.

Hippenstiel, R.D: Detection Theory: Applications and Digital Signal Processing. CRC Press (2002).

Hoang, D. 1993. Searching genetic databases in splash 2. IEEE Workshop on FPGAs for Custom Computing Machines 185-191.

Hofestadt, R. and Topel, T.: Case-Based Support of Information Retrieval and Analysis of Molecular Data. In Proceedings of the 15th IEEE Symposium on Computer-Based Medical Systems (CBMS 2002)

Hoffmann, R., Valencia, A. (2004). A gene network for navigating the literature. Nature Genetics, 36(7):664.

Hollink, L., Schreiber, A., Wielinga, B. Worring, M.: Classification of User Image Descriptions, International Journal of Human Computer Studies, (2004)

Hollink, L. Schreiber, A., Wielemaker, J., Wielinga, B.: Semantic Annotation of Image Collections, In Proceedings of K-CAP 2003 Workshop on Knowledge Capture and Semantic Annotation (2003)

Holt, A., Bichindaritz, I., Schmidt, R., Perner, P.: Medical Applications in Case-Based Reasoning. Knowledge Engineering Review 20 (2005) 289-292

Hsu, C.C. Pan, L.W. & Ho C. S (2000?) Using Induction tress to do case adaptation in CBR.

Hunter L. Knowledge acquisition planning: gaining expertise through experience. PhD. Thesis (DCS-TR-678). Computer Science, Massachusetts Institute of Technology, MA, 1989.

Iba W. and Langley P., Unsupervised Learning of Probabilistic Concept Hierarchies, In G. Paliouras, V. Karkaletsis, & C. D. Spyropoulos (Eds)., Machine learning and its applications. Springer Verlag, 2001.

Ilonen J. Keystroke dynamics. 2003.

Ivanovic, M. Kurbalija, V. Budimac Z. & M. Semnic. (2002) Role of Case-Based Reasoning in Neurology Decision Support. Fifth Joint Conference on Knowledge-Based Software Engineering Maribor, Slovenia, September 11-13, 2002

Iwarson S. Stressrelaterade hlsoproblem okr, vad hande under 1900-talet? Lkartidningen, 101(12), 2004.

Jaczynski M. and Trousse B. Fuzzy Logic for the retrieval step of a case-based reasoner. Proceedings Second European Workshop on Case-Based Reasoning, pp 313-322 (1994)

Jadad, A. R., Haynes, R.B., Hunt, D., Browman, G.P.: The Internet and Evidence-Based Decision Making: A Needed Synergy for Efficient Knowledge Management in Health Care, Canadian Medical Association Journal, Vol. 162, (2000)

Jain, A.K., Dubes R.C.: Algorithms for Clustering Data. Prentice Hall (1998).

Jain A.K. and Dubes R.C., Algorithms for Clustering Data, Prentice Hall, 1988.

Jang Y. HYDI: a hybrid system with feedback for diagnosing multiple disorders. PhD. Thesis (TR-576). Computer Science, Massachusetts Institute of Technology, MA, 1993.

Janichen, S., Perner, P.: Conceptual clustering and case generalization of two dimensional forms. Computational Intelligence 22(3-4) (2006) 177-193

Janichen S., Perner P.: Learning of General Cases, workshop 2005.

Janichen, S., Perner, P.: Case acquisition and case mining for case-based object recognition. In: Proceedings of the 7th European Conference on Case Based Reasoning, ECCBR'04, Springer (2004) 616-629

Jarmulak, J. (1998). Case-based classification of ultrasonic B-Scans: Case-base organisation and case retrieval. In B. Smyth & P. Cunningham (Eds.) Advances in Case-Based Reasoning (pp. 100-111). Berlin: Springer Verlag.

Jarmulak J.: Case-Based Classification of Ultrasonic B-Scans: Case-Base Organiza-tion and Case Retrieval. In: Smyth, B., Cunningham, P. (eds.): Proceedings of ECCBR 98, Springer-Verlag, Lecture Notes in Artificial Intelligence 1488, Berlin, Heidelberg, New York (1995) 100-111

Jaulent, M.C., Bennani, A., Le Bozec, C., Zapletal, E., Degoulet, P.: A customizable similar-ity measure between histological cases. Proc AMIA Symp (2002) 350-4

Jaulent MC, Le Bozec C, Cao Y, Zapletal E, Degoulet P. A property concept frame representation for flexible image-content retrieval in histopathology databases. Proc AMIA Symp. 2000;:379-83.

Jaulent MC, Le Bozec C, Zapletal E, Degoulet P. Case based diagnosis in histopathology of breast tumours. Medinfo. 1998;9 Pt 1:544-8.

Jaulent M.-C., et al: A Case-Based Reasoning Method for Computer-Assisted Diagnosis in Histopathology, Proceedings of the 6th Conference on Artificial Intelligence in Medicine Europe, pp. 239-242 (1997).

Jenssen, T.K., Lgreid, A., Komorowski, J., and Hovig, E. (2001). A literature network of human genes for high-throughput analysis of gene expression. Nature Genetics, 28(1):21-8.

Jiang, T. Approximation algorithms for multiple sequence alignment. URL: http://www.iis.sinica.edu.tw/_hil/summer/jiang2.ppt . University of California Lecture Notes.

Jiang, T. Fundamental algorithmic problems and techniques in sequence alignment. URL: http://www.iis.sinica.edu.tw/_hil/summer/jiang1.ppt . University of California Lecture Notes.

Joyce R., Gupta G. Identity authentication based on keystroke latencies. Commun. ACM, 33(2): 168-176, 1990.

Jurisica, I., & Glasgow, J., (2000) Extending Case-Based Reasoning by Discovering and Using Image Features in IVF. SAC (1) 52-59

Jurisica, I., Mylopoulos, J., Glasgow, J., Shapiro, H., Casper, R.F.: Case-based reasoning in IVF: prediction and knowledge mining. Artificial Intelligence in Medicine, 12(1998) 1-24

Kahn, C. E., Anderson, G. M.: Case-based reasoning and imaging procedure selection, Investigative Radiology, Vol. 29, (1994) 43-64

Kahn CE Jr. Artificial intelligence in radiology: decision support systems. Radiographics. 1994 Jul;14(4):849-61. Review.

Kahn CE Jr. Planning diagnostic imaging work-up strategies using case-based reasoning. Proc Annu Symp Comput Appl Med Care. 1994;:931-5.

Kahn, M.G. In pursuit of time's arrow: temporal reasoning in medical decision support. In: Proc. of the 4th Conference on Artificial Intelligence in Medicine Europe, Munich, IOS Press, 1993, pp.3-6.

Kalinowsky L, Hippius H: Pharmacolological, convulsive and other somatic treatments in psychiatry. Grunee&Stratton, New York London (1969)

Kanehisa M., Goto S., Kawashima S., Okuno Y., and Hattori M., (2004). The KEGG resource for deciphering the genome. Nucleic Acids Res., 1.

Kass, A., Leake, D., Owens, C.: SWALE, A Program that Explains. In: Schank, R.C. (edt.): Explanation Patterns. Understanding Mechanically and Creatively, Laurence Erlbaum Associates, Publishers, Hillsdale, New Jersey (1986) 232-256

Kendall MG, Stuart A: The advanced theory of statistics. 4 ed. New York: Macmillan publishing, New York (1979).

Kenny NP. Codes and character: the pillars of professional ethics. J Am Coll Dent. 1998 Fall;65(3):5-8.

Kentala E, Laurikkala J, Pyykko I, Juhola M. Discovering diagnostic rules from a neurotologic database with genetic algorithms. Ann Otol Rhinol Laryngol. 1999 Oct;108(10):948-54.

Kentala E, Pyykko I, Auramo Y, Juhola M. Neural networks in neurotologic expert systems. Acta Otolaryngol Suppl. 1997;529:127-9.

Keogh E., A fast and robust method for pattern matching in time series databases, Proc. Int. Conf. on Tools with Artificial Intelligence, 1997.

Keogh E., Chakrabarti K., Pazzani M., Mehrotra S., Dimensionality reduction for similarity search in large time series databases, Knowledge and Information Systems 3(3): 263-286, 2000.

Khan, A. S. and Hoffmann, A.: Building a Case-Based Diet Recommendation System with-out a Knowledge Engineer. Artificial Intelligence in Medicine, 27: 155-179 (2003)

Khorsand A, Haddad M, Graf S, Moertl D, Sochor H, Porenta G. Automated assessment of dipyridamole 201Tl myocardial SPECT perfusion scintigraphy by case-based reasoning. J Nucl Med. 2001 Feb;42(2):189-93.

Kitano, H. (2002). Systems biology: a brief overview. Science, 295(5560):1662-4.

Kohler, J., Lange, M., Hofestadt, R., and Schulze-Kremer, S., (2000). Logical and Semantic Database Integration. Proc. of the IEEE Symposium Bioinformatics and Biomedical Engineering, ed. Young, D. C.

Kolodner, J. L., and Simpson, R. L. (1989). The MEDIATOR: Analysis of an early case-based problem solver. Cognitive Science 13(4): 507-549.

Kolodner J.L., Educational implications of analogy: A view from case-based reasoning, American Psychologist, 52 (1):57-66, 1997.

Kolodner J. L., Case-Based Reasoning, Morgan Kaufmann Publishers, San Mateo, CA, 1993.

Kolodner J.L. and Kolodner R.M. Using experience in clinical problem solving: introduction and framework. IEEE Transactions on Systems, Man, and Cybernetics, 17(3):420-431, 1987.

Koton P. Using experience in learning and problem solving. PhD. Thesis (TR-441). Computer Science, Massachusetts Institute of Technology, MA, 1989.

Koton, P.: Reasoning about evidence in causal explanations. In: Kolodner, J (ed): First Workshop on CBR. Morgan Kaufmann, San Mateo (1988) 260-270

Koton, P. 1988., Reasoning about Evidence in Causal Explanations. MIT Laboratory for Computer Science, Clinical Decision Making Group, 545 Technology Square, Room 371, Cambridge, MA 02139, Published in: Proceedings of the DARPA Case-Based Reasoning Workshop, 1988.

Koton, P.: Reasoning about evidence in causal explanations, In Proceedings of AAAI-88, (1988) 256-261

Krogh, A. 1998. An introduction into hidden markov models for biological sequences. In Salzberg, S.; Searls, D.; and Kasif, S., eds., Computational Methods in Molecular Biology. Elsevier Science. chapter 4.

Kuczewski MG. Casuistry and its communitarian critics. Kennedy Inst Ethics J. 1994 Jun;4(2):99-116.

Kulp, D.; Haussler, D.; Reese, M.; and Eeckman, F. 1996. A generalized hidden markov model for the recognition of human genes in DNA. In Proceedings of ISMB-96, 134-142.

Kusnierczyk W., Aamodt A., and Lgreid A.: Knowledge-Intensive Case-Based Support for Automated Explanation of Biological Phenomena, workshop 2005

Kwiatkowska M, Atkins M.S.: Case Representation and Retrieval in the Diagnosis and Treatment of Obstructive Sleep Apnea: A Semio-fuzzy Approach, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2004, p?

Kwiatkowska, M., Atkins, S. Case Representation and Retrieval in the Diagnosis and Treatment of Abstructive Sleep Apnea: A Semiofuzzy Approach. In: European Conference on Case Based Reasoning Workshop Proceedings. Madrid, Spain (2004) in press

Kwiatkowska M. Atkins M.S.: A Semio-Fuzzy Approach to Information Fusion in the Diagnosis of Obstructive Sleep Apnea. Proceedings NAFIPS (2004) 680-685

Lance G.N. and Williams W.T., A General Theory of Classification Sorting Strategies, 1. Hierarchical Systems, pp. 373-380, Comp. J. 9, 1966.

Landis, B., Romano, P.M.: A scoring system for capnogram biofeedback: Preliminary findings. Applied Psychophysiology and Biofeedback 23 (1998) 75-91

Lau F, Vincent DD. A knowledge-based care protocol system for ICU. Medinfo. 1995;8 Pt 2:979-83.

Leake, D., McSherry, D.: Introduction to the Special Issue on Explanation in Case-Based Reasoning. Artificial Intelligence Review 24 (2005) 103-108

Leake, D. B. and Sooriamurthi R.: Managing Multiple Case Bases: Dimensions and Issues. In Proceedings of the 15th International Florida Artificial Intelligence Research Society (FLAIRS) Conference. AAAI Press, Menlo Park, 106-110 (2002)

Leake, D. and Wilson, D.: When Experience Is Wrong: Examining CBR for Changing Tasks and Environments. In Proceedings of the Third International Conference on Case-Based Reasoning, Springer-Verlag: Berlin 218-232 (1999)

Leake D. and Wilson D. Combining cbr with interactive knowledge acquisition, manipulation and re-use. Third International Conference on Case-Based Reasoning- ICCBR-99, 1999.

Leake, D. B.: CBR in Context: The Present and Future. In Leake, D., (ed.): Case-Based Reasoning: Experiences, Lessons, and Future Directions. Menlo Park: AAAI Press/MIT Press 1-35 (1996)

Leake D.B. Combining rules and cases to learn case adaptation. In Proc. 17th International Conference of Cognitive Science Society: Pittsburgh, 1995.

Lebowitz, M.: Concept Learning in a Rich Input Domain: Generalization-Based Memory. In: Michalski, R.S., Carbonell, J.G., Mitchell, T.M. (eds.): Machine Learning: An Artificial Intelligence Approach, Vol 2., Morgan Kaufmann, Los Altos, CA (1987) 193-214

LeBozec C, Jaulent MC, Zapletal E, Heudes D, Degoulet P. IDEM: a Web application of case-based reasoning in histopathology. Comput Biol Med. 1998 Sep;28(5):473-87.

LeBozec C, Jaulent MC, Zapletal E, Degoulet P. Unified modeling language and design of a case-based retrieval system in medical imaging. Proc AMIA Symp. 1998;:887-91.

Lehner Bianca, Gerald Thurler, Claudine Breant, Phedon Tahintzi, Franois Borst. 2003. Retrieval of Similar Cases using the ARCHIMED Navigator. Medical Infomraics Europe, Saint Malo, France.

Lehrer, P.M., Vaschillo, E., Vaschillo, B., Lu, S.E., Scardella, A., Siddique, M., Habib, R.H.: Biofeedback treatment for asthma. Chest 126 (2004) 352-361

Lehrer, P.M., Vaschillo, E., Vaschillo, B.: Resonant frequency biofeedback training to increase cardiac variability: Rationale and manual for training. Applied Psychophysiology and Biofeedback 25 (2000) 177-191

Lenat, D., Davis, R., Doyle, J., Genesereth, M., Goldstein, I., Schrobe, H.: Reasoning about reasoning. In Hayes-Roth, F., Waterman, D.A., Lenat, D.B., eds.:Building Expert Systems. Addison-Wesley, London (1983) 219-239

Leng B, Buchanan BG, Nicholas HB. Protein secondary structure prediction using two-level case-based reasoning. J Comput Biol. 1994 Spring;1(1):25-38.

Leng B, Buchanan BG, Nicholas HB. Protein secondary structure prediction using two-level case-based reasoning. Proc Int Conf Intell Syst Mol Biol. 1993;1:251-9.

Lenz M., Bartsch-Sporl B., Burkhard H.-D., and Wess S., editors. Case-Based Reasoning Technology, From Foundations to Applications, volume 1400 of Lecture Notes in Computer Science. Springer, 1998.

Leonhard K.: The Classification of the Endogenous Psychoses. John Wiley & Sons, New York (1979)

Leveson, N., Turnwe C.S.: An Invertigation of the Therac-25 accidents. IEEECom-puter, 26(7), July 1993 (1993) 18-41

Ley, R.: The modification of breathing behavior: Pavlovian and operant controling emotion and cognition. Behavior Modification 23 (1999) 441-479

Linkens, D.A., Abbod M.F., Mahfouf M. Department of Automatic Control and Systems Engineer-ing. University of Sheffield, Sheffield S1 3JD, United Kingdom (1988)

Lim Kee Guan, 2003. Knowledge Sharing and Evaluation in Healthcare Enterprises using KM-Mail. Medical Infomraics Europe, Saint Malo, France.

Little R, Rubin D: Statistical analysis with missing data. John Wiley & Sons, 1987.

Lopez, B., Plaza, E. Case-based learning of plans and goal states in medical diagnosis. Artificial Intelligence in Medicine. Elsevier. Vol. 9 (1997) 29-60

Lopez, B., Plaza, E.: Case-Base Planning for medical diagnosis. In: Methodologies for Intelligent Systems, 7th. International Symposium, ISMIS-93. Lecture Notes in Artificial Intelligence. Vol. 689. Springer-Verlag. Berlin Heidelberg, New York (1993) 96-105

Lopez B., and Plaza E. Case-based learning of strategic knowledge Machine Learning EWSL-91, Lecture Notes in Artificial Intelligence, ed Kodratoff, Springer-Verlag, pp 398-411(1993)

Long, X., Suel, T.: Optimized Query Execution in Large Search Engines with Global Page Ordering. In: International Conference on Very Large Data Bases (VLDB) (2003)

Lorenzi, F., Abel, M., Ricci, F. SISAIH: a Case Based Reasoning Tool for Hospital Admission Authorization Management. In: European Conference on Case Based Reasoning Workshop Proceedings. Madrid, Spain (2004) in press

Lorenzi F. Uso da metodologia de raciocnio baseado em casos na investigao de irregularidades nas internaes hospitalares. Master dissertation, PGCC, 1998.

Lowenstein T. (1995). Stress and Body Temperature. http://www.cliving.org/stress.htm . Last referred on May 2006

Luger G.F. Artificial Intelligence Structures and Strategies for Complex Problem Solving. Pearson Education Limited, 4 edition, 2002.

Lum, L.C.: Hyperventilation syndromes physiological considerations in clinical management. In Timmons, B.H., Ley, R., eds.: Behavioral and psychological approaches to breathing disorders. Kluwer Academic Publishers (1994) 113-123

Ma J, Knight B: A Framework for Historical Case-Based Reasoning. 5th International Conference on Case-Based Reasoning, Springer (2003) 246-260

Macura, R. T & K. J. Macura: Case-based reasoning: opportunities and applications in health care. Artificial Intelligence in Medicine, Volume 9, Number 1, January 1997 1-4

Macura, R. T., Macura K. J.: Radiology image resource with a case-based retrieval system, Case-Based Reasoning Research and Development: First International Conference In Proceedings ICCBR-95, (1995) 43-54

Macura RT, Macura KJ, Toro VE, Binet EF, Trueblood JH, Ji K. Computerized case-based instructional system for computed tomography and magnetic resonance imaging of brain tumors. Invest Radiol. 1994 Apr;29(4):497-506.

Malek, M.: A Connectionist Indexing Approach for CBR Systems. In: Veloso, M., Aamodt, A. (eds.): Proceedings of ICCBR 95, Springer-Verlag, Lecture Notes in Ar-tificial Intelligence 1010, Berlin, Heidelberg, New York (1995) 520-527

Malek, M., Rialle, V.: A Case-Based Reasoning System Applied to Neuropathy Di-agnosis. In: Keane, M., Haton, J.-P., Manago, M. (eds.): Proceedings of EWCBR 94, Acknosoft Press, Paris (1994) 329-336

Malik M., Camm J., et al. Heart rate variability - standards of measurement physciological interpretation and clinical use. European Heart Journal 17:354-381, March 1996.

Mallat S.G. A Theory for Multiresolution signal Decomposition: The Wavelet Representation, IEEE Trans. On Pattern Analysis and Machine Intelligence, 11(7): 674-693, July (1989).

Manickam S, Abidi SS. Extracting clinical cases from XML-based electronic patient records for use in web-based medical case based reasoning systems. Medinfo. 2001;10(Pt 1):643-7.

Mann, BD; Sarechdern, AK; Nieman, LZ et. Al., (1996) Medical Teacher to students by role playing: a model integrating psychosocial issues with disease management. JI. JCancer-Educ, Summer 11[2]:65-72.

Mariuzzi G, Mombello A, Mariuzzi L, Hamilton PW, Weber JE, Thompson D, Bartels PH. Quantitative study of ductal breast cancer--patient targeted prognosis: an exploration of case base reasoning. Pathol Res Pract. 1997;193(8):535-42.

Marling C., and Whitehouse P., Case-based reasoning in the care of Alzheimer's disease patients, In D. W. Aha and I. Watson, editors, Proceedings of the Fourth International Conference on Case-Based Reasoning, ICCBR-01, pp 702-715, 2001, Berlin, Springer.

Marling, C. R., Whitehouse, P. J., Fioritto, P. A. Bendis, J. E. Knowledge Sharing and Case-Based Reasoning in Geriatric Care. In: AAAI-99 Workshop on Exploring Synergies of Knowledge Management and Case-Based Reasoning, (1999)

Marling C., Petot G., and Sterling L., Planning nutritional menus using case-based Reasoning, In Artificial Intelligence in Medicine: Applications of Current Technologies, Stanford, CA, 1996. Working Notes of the AAAI-96 Spring Symposium.

Marling, C.R., Petot, G.J., Sterling, L.S. Integrating Case-Based and Rule-Based Reasoning to Meet Multiple Design Constraints, Computational Intelligence, 15(3):308-332.

Maximini, K., Maximini, R., Bergmann, R.: An Investigation of Generalized Cases. In: Ashley, K.D., Bridge, D.G. (eds.): Proceedings of ICCBR 03. Lecture Notes in Artificial Intelligence 2689, Springer-Verlag, Berlin, Heidelberg, New York (2003) 261-275

McCraty R., Atkinson M., et al: The Effects of Emotions on Short-Term Power Spectrum Analysis of Heart Rate Variability, American Journal of Cardiology, vol. 76, no. 14, pp.1089-1093 (1995).

Mc Farlane P.A., Mendelssohn D.C., A call to arms: economic barriers to optimal dialysis care, Perit. Dial. Int., 20, 7-12, 2000.

McSherry D.: Hypothetico-Deductive Case-Based Reasoning, workshop 2007

McSherry, D.: Explaining the pros and cons of conclusions in CBR. In Calero, P.A.G., Funk, P., eds.: Advances in Case-Based Reasoning, 7th European Conference, ECCBR 2004 Madrid, Spain, August 30th through Sep 2nd, 2004. Volume 3155 of LNAI., Springer (2004) 317-330

McSherry D: Interactive Case-Based Reasoning in sequential diagnosis. Applied Intelligence14 (1) 2001, 65-76

MacQueen J.B., Some Methods for classification and Analysis of Multivariate Observations, Proceedings of 5-th Berkeley Symposium on Mathematical Statistics and Probability, pp. 281-297, Berkeley, University of California Press, 1967.

Michie D., Spiegelhalter D., Taylor C. Machine learning, neural and statistical classification. Ellis Horwood, 1994.

Mink. J. W. & Weinberger, D. R., (1998).http://www.mentalhealth.com./fr20.html

Mougouie, B., Bergmann, R.: Similarity Assessment for Generalized Cases by Optimization Methods. In: Craw, S., Preece, A. (eds.): Proceedings of EWCBR 02. Lecture Notes in Artificial Intelligence 2416. Springer-Verlag, Berlin, Heidelberg, New York (1995) 249-263

Monrose F., Rubin A. Authentication via keystroke dynamics. In proceedings of the 4th ACM conference on Computer and communications security, pages 48-56. ACM Press, 1997.

Montani S.: On the Possible Roles of Case-Based Reasoning in Medical Decision Support, workshop 2006

Montani, S., Portinale, L., Bellazzi, R., Leornardi, G.: Case-based retrieval to support the treatment of end stage renal failure patients. Artificial Intelligence in Medicine, 2006.

Montani, S., Portinale, L.: Accounting for the temporal dimension in case-based retrieval: A framework for medical applications. Computational Intelligence 22(3-4) (2006) 208-223

Montani, S., Portinale, L., Bellazzi, R., Leornardi, G.: RHENE: A Case Retrieval System for Hemodialysis Cases with Dynamically Monitored Parameters. In: Funk, P., Gonzalez Calero, P. (eds.): Proceedings of ECCBR 04. Lecture Notes in Artificial Intelligence 3155, Springer-Verlag, Berlin, Heidelberg, New York (2004) 659-672

Montani S., Portinale L., Leonardi G, Bellazzi R.: Applying Case-Based Retrieval to Hemodialysis Treatment, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, Trondheim, Norway, p 59-68.

Montani, S., Portinale, L., Leonardi, G., Bellazzi, R. Applying Case-Based Retrieval to Hemodialysis Treatment. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 59-68

Montani S., Magni P., Bellazzi R., Larizza C., Roudsari A.V., and Carson E.R.: Integrating model-based decision support in a multi-modal reasoning system for managing type I diabetic patients, Artificial Intelligence in Medicine 29:131-151, 2003.

Montani, S., Bellazzi, R.: Supporting decisions in medical applications: the knowledge management perspective. Int J Med Inf, Vol 68 (1-3) (2002 dec) 79-90

Montani S., Magni P., Rousdari A.V., Carson E.R., Bellazzi R.: Integrating different methodologies for insulin therapy support in type I diabetic patients. In Artificial Intelligence in Medicine pages 121-130. AIME'01, July 2001.

Montani, S. and Bellazzi R.: Intelligent Knowledge Retrieval for Decision Support in Medical Applications. In MEDINFO 2001, V. Patel et al. (Eds), IOS Press 498-502 (2001)

Montani, S., Bellazzi, R., Portinale L, Stefanelli, M. A Multi-Modal Reasoning Methodology for Managing IDDM Patients. International Journal of Medical Informatics 58-59 (2000) 243-256.

Montani, S. Bellazzi, R. Portinale, L. d'Annunzio, G. Fiocchi, S. Stefanelli, M. Diabetic Patients Management Exploiting Case-Based Reasoning Techniques, Comput. Meth. and Progs. in Biomedicine 62 (2000) 205-218.

Montani S, Bellazzi R. Exploiting multi-modal reasoning for knowledge management and decision support: an evaluation study. Proc AMIA Symp. 2000;:585-9.

Montani S, Bellazzi R. Integrating case based and rule based reasoning in a decision support system: evaluation with simulated patients. Proc AMIA Symp. 1999;:887-91.

Mucha H.J., Clusteranalyse mit Mikrocomputern, Akademie Verlag, Berlin, 1992.

Muller, M. and Kersten, S.: NutriGenomics: Goals and Strategies. Nature Rev. Genet., 4: 315-322 (2003)

Nasukawa T., Nagano, T.: Text Analysis and Knowledge Mining System. Knowledge management Spe-cial Issue. IBM systems journal Vol. 40 (2001) 967-984

National Library of Medicine: The Specialist NLP Tools. http://specialist.nlm.nih.gov [Last access: 2005-04-01] (2004)

National Library of Medicine: MetaMap Transfer (MMTx), http://mmtx.nlm.nih.gov [Last access: 2005-04-01] (2005)

National Library of Medicine: The Unified Medical Language System. http://umls.nlm.nih.gov [Last ac-cess: 2005-04-01] (2005)

Nieto M. ; Ochoa A., (2002) Applying dependences model to CBR software. CIIC-'02; Soto La Marina, Mexico.

Nikitin, A., Egorov, S., Daraselia, N., and Mazo I., (2003). Pathway studiothe analysis and navigation of molecular networks. Bioinformatics, 19.

Niloofar, A., Jurisica, I.: Maintaining Case-Based Reasoning Systems: A Machine Learning Approach. In: Funk, P., Gonzalez Calero, P. (eds.): Proceedings of ECCBR 04. Lecture Notes in Artificial Intelligence 3155, Springer-Verlag, Berlin, Heidelberg, New York (2004) 17-31

Nilsson, M., Funk, P., Olsson, E.M., von Scheele, B., Xiong, N.: Clinical decision-support for diagnosing stress-related disorders by applying psychophysiological medical knowledge to an instance-based learning system. Artificial Intelligence in Medicine 36(2) (2006) 159-176

Nilsson, M., Funk, P., Olsson, E.M.G., von Scheele, B., Xiong, N.: Clinical decision support for diagnosing stress related disorders by applying psychophysiological medical knowledge. Artificial Intelligence in Medicine (2005)

Nilsson, M., Funk, P., Xiong, N.: Clinical decision support by time series classification using wavelets. In: Proceedings of the 7th International Conference on Enterprise Information Systems, ICEIS'05, INSTICC Press (2005) 169-175

Nilsson, M. and Sollenborn, M.: Advancements and trends in medical case based reasoning: An overview of systems and system development. In: Proceedings of the 17th International FLAIRS Conference 178-183 (2004) 9-18, 178-183

Nilsson, M., Funk, P.: A Case-Based Classification of Respiratory sinus Arrhythmia. In: Funk, P., Gonzalez Calero, P. (eds.): Proceedings of ECCBR 04, Springer-Verlag, Lecture Notes in Artificial Intelligence 3155, Berlin, Heidelberg, New York (2004) 673-685

Nilson M., and Funk P. A Case-Based Classification of Respiratory Sinus Arrhythmia. Proceedings of The Seventh European Conference on Case-Based Reasoning (ECCBR-04), Madrid, Spain, p 673-685, 2004.

Nilsson M., Funk P., Sollenborn M.: Complex Measurement Classification in Medical Applications Using a Case-Based Approach, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, Trondheim, Norway, p 59-68.

Nilsson, M., Funk, P., Sollenborn, M. Complex Measurement Classification in Medical Applications Using a Case- Based Approach. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 59-68

Nucci G. et al. Verification phase final report, T-IDDM deliverable 5.2 http://aim.unipv.it/projects/tiddm/ftp.html, 1999.

Nugent, C., Cunningham, P.: A case-based explanation system for 'black-box' systems. In Cunningham, P., McSherry, D., eds.: ECCBR 2004 Workshop Proceedings. (2004) 155-164

O'Sullivan D., Bertolotto M., Wilson D., McLoughlin E.: Fusing Mobile Case-Based Decision Support with Intelligent Patient Knowledge Management, workshop 2006

O'Sullivan, D., McLoughlin, E., Bertolotto, M., Wilson, D.: \A Case-Based Approach to Managing Geo-spatial Imagery Tasks, In Proceedings of the 7th European Conference on Case-Based Reasoning, (2004) 702-716

Ochi-Okorie AS. Disease diagnosis validation in TROPIX using CBR. Artif Intell Med. 1998 Jan;12(1):43-60.

Ochoa A. ; Fernandini M. & Shingareva I., (2005) Use of Oniric techniques for describing Panar Syndrome. Central Asia CCBR; Astana, Kazakhstan.

Oehlmann R. Evaluating a case-based discovery system: a case-study in content-oriented evaluation. Artif Intell Med. 1998 Jan;12(1):61-76.

Olsson, E., Funk, P. and Xiong N.: Fault Diagnosis in Industry Using Sensor Readings and Case-Based Reasoning. Journal of Intelligent & Fuzzy Systems, vol. 15, ISSN 1064-1, IOS Press, December (2004)

Olsson, E., Funk, P. and Bengtsson, M.: Fault Diagnosis of Industrial Robots using Acoustic Signals and Case-Based Reasoning. In: Proceedings of the 7th European Conference on Case-Based Reasoning, Madrid, Springer 686-701 (2004)

Olson C.F., Huttenlocher D.P., Automatic Target Recognition by Matching Oriented Edge Pixels, IEEE Transactions on Image Processing 6(1), 1997, p 103-113

van Ommen, B.: NutriGenomics: Exploiting Systems Biology in the Nutrition and Health Arenas. Nutrition, 20:4-8 (2004)

van Ommen, B. and Stierum, R.: NutriGenomics: Exploiting Systems Biology in the Nutri-tion and Health Arena. Curr. Opin. Biotechnol. 13: 517-521 (2002)

Ong, L., Sheperd, B., Tong, L., Seow-Choen, F., Ho, Y., Tong, L. and Y, S. H., Tan, K.: The colorectal cancer recurrence support (CARES) system, Artificial Intelligence in Medicine, Vol. 11(3), (1997) 175-188

Online-Encyclopedia. (Website) http://en.wikipedia.org/wiki/Bronchiole .

Ontanon S., Plaza E.: Justification-Based Selection of Training Examples for Case Base Reduction. ECML 2004: 310-321

Oppenheim A.V., Shafer R.W., Digital signal processing, Prentice-Hall, Englewood Cliffs, N.J., 1975.

Orenstein, D. In: Bronchiolitis. 16 edn. Saunders Philadelphia (2000) 1285-1287

Overton, C. G., and Haas, J. 1998. Case-based reasoning gene annotation. In Salzberg, S.; Searls, D.; and Kasif, S., eds., Computational Methods in Molecular Biology, Elsevier Science, chapter 5.

Owens, C.: Integrating Feature Extraction and Memory Search, In: Kolodner, J.L. (edt.): Case-Based Learning, Kluwer Academic Publishers, Boston (1993) 117-145

Pal, S.K., Shiu C.K.: Foundations of Soft Case-Based Reasoning. Wiley (2004).

Palsson, B. (2000). The challenges of in silico biology. Nature Biotechnology, 18.

Park H.J., Oh J.S., Jeong D.U., Park K.S.: Automated Sleep Stage Scoring Using Hybrid Rule-and Case-Based Reasoning. Computers and Biomedical Research 33 (5) (2000) 330-349.

Patel, V., Arocha, J., Zhang, J.: Thinking and Reasoning in Medicine. In: Holyoak, K., Morrison, R. (eds.): The Cambridge Handbook of Thinking and Reasoning. Cambridge University Press, Cambridge, UK (2005) 727-750

Pearce, J. (1996) Good Habits and Bad Habits: Of the life in family to the life in society. Madrid: Editions Paidos

Perner, P. Improving the Accuracy of Decision Tree Induction by Feature Pre-Selection, Applied Artificial Intelligence, Vol. 15, No. 8, p. 747-760

Perner P.: Prototype-Based Classification, workshop 2006

Perner, P., Janichen, S., Perner, H.: Case-based object recognition for airborne fungi recognition. Artificial Intelligence in Medicine 36(2) (2006) 137-157

Perner P., Buhring A., Case-Based Object Recognition, In: P. Funk, P. Gonzales, Proceedings of the 7th European Conference on Case-Based Reasoning, ECCBR'04, Springer, (2004), 375-378.

Perner P. and Jnichen S., Case Acquisition and Case Mining for Case-Based Object Recognition, In: Peter Funk and Pedro A. Gonzalez Calero (Eds.), Advances in Case-Based Reasoning, Proceedings of the ECCBR 2004, pp. 616-629, Springer Verlag, 2004.

Perner, P., Perner, H., Janichen, S., Buhring, A. Recognition of Airborne Fungi Spores in Digital Microscopic Images. In: European Conference on Case Based Reasoning Workshop Proceedings. Madrid, Spain (2004) in press

Perner P., Perner H., Janichen S., Buhring A. Recognition of Airborne Fungi Spores in Digital Microscopic Images. In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2004 p. ?

Perner, P., Gunther, T., Perner, H. Airborne Fungi Identification by Case-Based Reasoning. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 69-78

Perner P., Gunther T., Perner H.: Airborne Fungi Identification by Case-Based Reasoning, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, Trondheim, Norway, p 69-78.

Perner P., Data Mining on Multimedia Data, Springer Verlag 2003

Perner P., Gunther T., Perner H., Fiss G., Ernst R. Health monitoring by an image interpretation sytem -a system for air-borne fungi identification. In Medical Data Analysis volume 2868 of Lecture Notes in Computer Science pages 62-74, 2003.

Perner P., Gunther T., Perner H., Fiss G., Ernst R. Health Monitoring by an Image Interpretation System- A System for Airborne Fungi Identification. Proceedings of the 4th International Symposium on Medical Data Analysis, SMDA '03, Springer. pp 64-77 (2003)

Perner, P.: Incremental Learning of Retrieval Knowledge in a Case-Based Reasoning System. In: Ashley, K.D., Bridge, D.G. (eds.): Proceedings of ICCBR 03, Springer-Verlag, Lecture Notes in Artificial Intelligence 2689, Berlin, Heidelberg, New York (2003) 422-436

Perner P., Data Mining on Multimedia Data, Springer Verlag, lncs 2558, 2002

Perner P., H. Perner, and B. Muller, Mining Knowledge for Hep-3 Cell Image Classification, Artificial Intelligence in Medicine, 26(2002), p. 161-173.

Perner P., Why Case-Based Reasoning is Attractive for Image Interpretation, International Conference on Case-Based Reasoning, ICCBR2001, Vancouver Canada, In: D. Aha and I. Watson (Eds.), Case-Bases Reasoning Research and Developments, Springer Verlag 2001, lnai 2080, p. 27-44.

Perner P.: Why Case-Based Reasoning Is Attractive for Image Interpretation, Proceedings of the 4th International Conference on Case-Based Reasoning, pp. 27-43, (2001).

Perner, P.: Are Case-Based Reasoning and Dissimilarity-Based Pattern Recognition two Sides of the same Coin? In: Machine Learning and Data Mining in Pattern Recognition, Springer Verlag 35-52 (2001)

Perner P.: CBR-Based Ultra Sonic Image Interpretation. In: E. Blanzieri, L. Portinale (Eds.): Advances in Case-Based Reasoning, lnai 1898, Springer 2000, p. 479-490

Perner P., An Architeture for a CBR Image Segmentation System, Journal on Engineering Application in Artificial Intelligence, Engineering Applications of Artificial Intelligence, vol. 12 (6), 1999, p. 749-759

Perner, P. (1998). Using CBR learning for the low-level and high-level unit of a image interpretation system. In S. Singh (Ed.) Advances in Pattern Recognition (pp. 45-54). Berlin: Springer Verlag.

Perner P., Data Mining on Multimedia Data, Springer Verlag Berlin, 1998.

Perner, P.: Different Learning Strategies in a Case-Based Reasoning System for Im-age Interpretation. In: Smyth, B., Cunningham, P. (eds.): Proceedings of ECCBR 98, Springer-Verlag, Lecture Notes in Artificial Intelligence 1488, Berlin, Heidelberg, New York (1995) 251-261

Petot, G.C., Marling C.R., Sterling L.S. An Artificial Intelligence System for Computer-Assisted Menu Planning, Journal of the American Dietetic Association, 98(9)(1998):1009-1014

Pevzner, P. A. 2000. Computational Molecular Biology: An Algorithmic Approach. The MIT Press. chapter 4,6.

Phuong NH, Kreinovich V. Fuzzy logic and its applications in medicine. Int J Med Inf. 2001 Jul;62(2-3):165-73.

Plaza E. and Lopez de Mantaras R. A case-based apprentice that learns from fuzzy examples Meth-odologies for Intelligent Systems 5, ed Ras, Zemankova and Emrich, Elsevier, pp 420-427 (1990)

Polanyi M. Tacit knowing'. In Marx, M.H. and Goodson, F.E. (Eds), Theories in Contemporary Psychology, 2nd edition. New York: Macmillan, 330-44 (1966)

Polare I.; Kaneshiro, Takeshi & Malashona, N. (2005), Modelling human societies using CBR. Central Asia CCBR; Astana, Kazakhstan.

Portinale L., Montani S. Bottrighi A, Leonardi G., Juarez J. A case-based architecture for temporal abstraction configuration and processing. Technical Report TR-INF-2006-05-02, Dipartimento di Informatica, Universita' del Piemonte Orientale, Alessandria, Italy, 2006.

Portinale, L., Torasso, P.: ADAPTER: An Integrated Diagnostic System Combining Case-Based and Abductive Reasoning. In: Veloso, M., Aamodt, A. (eds.): Proceedings of ICCBR 95. Lecture Notes in Artificial Intelligence 1010. Springer-Verlag, Berlin, Heidelberg, New York (1995) 277-288

Proctor J. M., Waldstein I., Weber R.: Identifying Facts for TCBR. 6th International Conference on Case-Based Reasoning, Workshop Proceedings. Stefanie Bruninghaus (Ed.) Chicago, IL, USA, August 23-26, ( 2005) 150-159

Prentzas J, Hatzilgeroudis I: Integrating Hybrid Rule-Based with Case-Based Reasoning. In: Craw, S., Preeece, A. (eds.): Proc ECCBR 2002, Springer, Berlin (2002) 336-349

Qiang, Y., Cheng, H.: Case Mining from Large Databases. In: Ashley, K. Bridge, D.G. (eds.): Proceedings of ICCBR 03. Lecture Notes in Artificial Intelligence 2689. Springer-Verlag, Berlin, Heidelberg, New York (2003) 691-702

Quinlan, J.R.: C4.5: Programs for Machine Learning. 1993, Morgan Kaufmann

Rafei D., Mendelzon A., Similarity-based queries for time series data, Proc. ACM SIGMOD, pp. 13-24, 1997.

Ram, A., and Francis, A. 1996. Multi-plan retrieval and adaptation in an experience-based agent. In Leake, D., ed., Case-Based Reasoning: Experiences, Lessons, and Future Directions. Menlo Park, CA: AAAI Press.

Ram, A.: Indexing, Elaboration and Refinement: Incremental Learning of Explana-tory Cases. In: Kolodner, J.L.(edt.): Case-Based Learning, Kluwer Academic Pub-lishers, Boston (1993) 7-54

Rasmussen E., Clustering Algorithms, In W.B. Frakes and R. Baeza-Yates (Eds), Information Retrieval, pp. 419-442, Prentice Hall, 1992.

Reategui, E. B. Campbell, J. A. & B. F. Leo: Combining a neural network with case-based reasoning in a diagnostic system. Artificial Intelligence in Medicine, Volume 9, Number 1, January 1997 5-27

Reategui, E., Campbell, J.A., Borghetti, S.: Using a Neural Network to Learn General Knowledge in a Case-Based System. In: Veloso, M., Aamodt, A. (eds.): Proceedings of ICCBR 95. Lecture Notes in Artifi-cial Intelligence 1010. Springer-Verlag, Berlin, Heidelberg, New York (1995) 528-537

Recio J. A., Daz-Agudo B, Gomez-Martn M.A. and Wiratunga N.: Extending jCOLIBRI for textual CBR. In Procs. Of 6th International Conference on CBR, volume 3620 of LNCS, Springer -Verlang, (2005) 421-435.

Registro Italiano di Dialisi e Trapianto, http://www.sin-italia.org.

Rezvani S, Prasad G: A hybrid system with multivariate data validation and Case-based Reasoning for an efficient and realistic product formulation. In: Ashley KD, Bridge DG (eds.): Proceedings International Conference on Case-based Reasoning, ICCBR 2003, Springer-Verlag, Berlin (2003) 465-478

Richards, D.: Knowledge-based system explanation: The ripple-down rules alternative. Knowledge and Information Systems 5 (2003) 2-25

Richter, M.: The knowledge contained in similarity measures. In: M Veloso and A Aamodt, editors, Case-Based Reasoning Research and Development: Proceedings of the 1st International Conference on Case Based Reasoning, Sesimbra, Portugal (1995)

Rissanen J. Modeling by shortest data description. Automatica, vol 14, pp. 465-471, 1978.

Roda IR, Sanchez-Marre M, Comas J, Cortes U, Poch M. Development of a case-based system for the supervision of an activated sludge process. Environ Technol. 2001 Apr;22(4):477-86.

Rogic, S.; Mackworth, A.; and Ouellette, B. 2001. Evaluation of gene-finding programs on mammalian sequences. Genome Research 11(5):817-832.

Romo-Jimenez ML, Bichindaritz I, Samuel-Lajeunesse B, Measuring the development of eating disorders in a group of patients with the Eating Disorders Inventory, Ann Med Psychol, 1995 Jun-Jul;153(6), 402-8 ;

Ronco C., Brendolan A., Bellomo R., Online monitoring in continuous renal replacement therapies, Kidney Int., 56, 8-14, 1999.

Roos, D. S. (2001). Bioinformaticstrying to swim in a sea of data. Science, 291(5507):1260-1261.

Rosch, E., Mervis, C.: Family Resemblances: Studies in the Internal Structure of Categories. Cognitive Psychology 7 (1975) 573-605

Rossille Delphine, Jean-Franois Laurent, Anita Burgun. 2003. Modelling of a case-based retrieval system for oncology. Medical Infomraics Europe, Saint Malo, France.

Russel S., Norvig P., Artificial Intelligence: a modern approach, 2nd edition, Prentice-Hall, 2003.

Sa, R.C., Verbandt, Y.: Automated breath detection on long-duration signals using feedforward backpropagation artificial neural networks. IEEE Transactions on Biomededical Engineering 49 (2002) 1130-1141

Salton G. and C. Buckley: Term Weighting Approaches in Automatic Text Retrieval, Technical Report. UMI Order Number: TR87-881., Cornell University (1987).

Salton, G., McGill M.: Introduction to modern information retrieval, (1983)

Salton G., A. Wong and C. S. Yang.: A Vector Space Model for Automatic Indexing, Communications of the ACM, vol.18, nr. 11, (1975) 613-620.

Santos P.J. and Badre A.N. Automatic chunk detection in human-computer interaction. In: Proceedings of the workshop on Advanced visual interfaces, pages 69-77. ACM Press, 1994.

Savitzky A., Golay M.: Smoothing and Differentiation of Data by Simplified Least Squares Procedures, Analytical Chemistry, vol. 36, no. 8, pp. 1627-1638 (1964).

Schank R.C., editor, Inside Multi-Media Case Based Instruction, Erlbaum, Mah-Wah, NJ, 1998.

Schank, R.C., Leake, D.B.: Creativity and Learning in a Case-Based Explainer. Arti-cifial Intelligence, 40 (1989) 353-385

Schank, R.C.: Dynamic memory. A theory of reminding and learning in computers and people. Camdridge University Press, Cambridge (1982)

von Scheele B.H.C.: Classification Systems for RSA, ETCO2 and other physiological parameters. StressMedicine AB (1999).

Von Scheele B. and Melin B.H.C. Reduction of stress problems in employees by mean of a self-administered psychophysiological screening and biobehavioral system: A controlled study. Applied Psychophysiology and Biofeedback, 24(2):139, 1999.

von Scheele B.H.C., von Scheele I.A.M. The measurement of respiratory and metabolic parameters before and after incremental exercise on bicycle of patients and control participants: Supporting the effort syndrome hypothesis? Applied Psychophysiology and Biofeedback 24(3): 167-177, 1999.

von Scheele, B.: Classification Systems for RSA, ETCO2 and other physiological parameters, PBM Stressmedicine, Technical report, www.pbmstressmedicine.se , Sweden 1-8 (1999)

Scott S. and Matwin S.: Text Classification Using WordNet Hypernyms, Use of Word-Net in Natural Language Processing Systems (1998).

Schmidt R, Vorobieva O: Case-Based Reasoning Investigation of Therapy Inefficacy. Knowledge-Based Systems (in press)

Schmidt, R., Waligora, T., Gierl, L.: Predicting influenza waves with health insurance data. Computational Intelligence 22(3-4) (2006) 224-237

Schmidt Rainer, Lothar Gierl. 2003. A Prognostic Model for Temporal Courses that Combines Temporal Abstraction and Case-based Reasoning. Medical Infomraics Europe, Saint Malo, France.

Schmidt Rainer, Olga Vorobieva, Lothar Gierl. 2003. Adaptation Problems in Therapeutic Case-based Reasoning Systems. Medical Infomraics Europe, Saint Malo, France.

Schmidt, R., Vorobieva, O., & Gierl, L., 2003. Case-Based Adaptation in Medicine Focusing on Hypothyroidism . Second German Workshop on Experience Management (GWEM 2003), 267-274.

Schmidt, R, Vorobieva, O., Gierl, L.: Case-based Adaptation Problems in Medicine. In: Reimer, U. et al.: Proceedings of WM2003: Professionelles Wissensmanagement - Erfahrungen und Visionen. Kollen-Verlag Bonn (2003) 267-274

Schmidt R. and Gierl L.. Prognostic Model for Early Warning of Threatening Influenza Waves. In Proceedings of the 1st German Workshop on Experience Management, pp 39-46 (2002)

Schmidt R. et al.: Case-Based Reasoning for Medical Knowledge-based Systems. International Journal of Medical Informatics 64 (2-3) (2001) 355-367

Schmidt R., Steffen D., Gierl L.: Evaluation of a Case-Based Antibiotics Therapy Advisor. In: Quaglini S., Barahona P., Andreassen S. (Eds.): Artificial Intelligence in Medicine AIME '01 July 2001, Berlin, 2001, 462-466

Schmidt, R., Montani, S., Bellazzi, R., Portinale, L., Gierl, L.: Case-Based Reasoning for Medical Knowledge-based Systems. International Journal of Medical Informatics 64 (2-3):355-357 (2001)

Schmidt, R., Gierl, L.: Case-based Reasoning for Antibiotics Therapy Advice: An Investigation of Retrieval Algorithms and Prototypes. Artificial Intelligence in Medicine 23 (2) (2001) 171-186

Schmidt R., Gierl L.: Temporal Abstractions and case-based reasoning for medical course data: Two prognostic applications. In Machine Learning and Data Mining in Pattern Recognition, volume 2123 of Lecture Notes in Computer Science, pages 23-24, 2001.

Schmidt R, Gierl L. Medical case-based reasoning systems: experiences with architectures for prototypical cases. Medinfo. 2001;10(Pt 1):518-22.

Schmidt R, Gierl L: Case-based Reasoning for Medical Knowledge-based Systems. Medical Informatics Europe, In: Hasman A, Blobel B, Dudeck J, Engelbrecht R, Gell G, Prokosch H-U (Hrsg.): Medical Infobahn for Europe, Proceedings of MIE2000 and GMDS2000, IOS Press, Amsterdam, 2000, 720-725

Schmidt R, Gierl L: Evaluation of Strategies for Generalised Cases within a Case-based Reasoning Antibiotics Therapy Advice System. In: Blanzieri E, Portinale L (Hrsg.): Advances in Case-Based Reasoning, 5th European Workshop, EWCBR-2000, Springer Verlag Berlin, 2000, 491-503

Schmidt R, Gierl L: ICONS: Comparison of two Retrieval Algorithms and Evaluation of Generation Strategies for Generalised Cases. In: Gker M (Hrsg.): 8th German Workshop on Case-Based Reasoning, DaimlerChrysler Research and Technology, 2000, 111-119

Schmidt R., B Pollwein B., Gierl L., Case-based reasoning for antibiotics therapy advice, In Althoff K. D., R. Bergmann, and L. K. Branting, editors, Case-Based Reasoning Research and Development: Third International Conference on Case-Based Reasoning, ICCBR-99, pages 550-559, Berlin, 1999, Springer.

Schmidt R, Pollwein B, Gierl L. Medical multiparametric time course prognoses applied to kidney function assessments. Int J Med Inf. 1999 Feb-Mar;53(2-3):253-63.

Schmidt R, Pollwein B, Gierl L: Experiences with Case-Based Reasoning Methods and Prototypes for Medical Knowledge-Based Systems. In: Horn W, Shahar Y, Lindberg G, Andreassen S, Wyatt J (Hrsg.): Proceedings of Artificial Intelligence in Medicine, AIMDM'99, Springer Berlin, 1999, 124-132

Schmidt R., Gierl L.: Prototypes for Medical Case-Based Reasoning. In: Victor N. et al. (Hrsg.): GMDS'99, Munchen, 1999, 172-173

Schmidt R, Pollwein B, Gierl L. Prognoses of multiparametric medical time courses applied to kidney function assessments. Medinfo. 1998;9 Pt 1:554-8.

Schmidt, R., Gierl, L.: Experiences with Prototype Designs and Retrieval Methods in Medical Case-Based Reasoning Systems. In: Smyth, B., Cunningham, P. (eds.): Proceedings of ECCBR 98. Lecture Notes in Artificial Intelligence, Vol. 1488. Springer-Verlag, , Berlin, Heidelberg, New York (1998) 370-381

Schmidt R., Heindl B., Pollwein B., Gierl L.: Multiparametric Time Course Prognoses by Means of Case-based Reasoning and Abstractions of Data and Time. In : van Bemmel J., McCray A.T. (Hrsg.): IMIA Yearbook "Medical Informatics 1997", 1998,407-420

Schmidt R, Gierl L: The Roles of Prototypes in Medical Case-Based Reasoning Systems. 5th German Workshop on Case-Based Reasoning, GWCBR-97,Universitt Kaiserslautern, 1997, 207-216

Schmidt R, Heindl B, Pollwein B, Gierl L. Multiparametric time course prognoses by means of case-based reasoning and abstractions of data and time. Med Inform (Lond). 1997 Jul-Sep;22(3):237-50.

Schmidt, R.; Heindl, B.; Pollwein, B.; Gierl, L.: Abstraction of Data and Time for Prognoses of the Kidney Function in a Case-Based Reasoning System. In: Brender J. et al (eds.): MIE'96, IOS Press, 1996, 570-574.

Schmidt R., Boscher L., Heindl B., Schmid G., Pollwein B., Gierl L.: Adaptation and Abstraction as a Step Towards Case-Based Reasoning in the Real Medical World: Case-based Selection Strategies for Antibiotics Therapy. In: Greenes R.A. et al. (eds.): MEDINFO 95. North-Holland, Amsterdam, 1995, 947-951

Schmidt R., Boscher L., Heindl B., Schmid G., Pollwein B., Gierl L.: Adaptation and Abstraction in a Case-based Antibiotics Therapy Advisor. In: Barahona P. et al. (eds.): AIME 1995, Berlin, 1995, 209-217

Schuster A. Aggregating Features and matching Cases on Vague Linguistic Expressions, Proceedings of International Joint Conferences on Artificial Intelligence'97 pp.252-257, (1997)

Scotti, J. R., Schulman, D. And & Hojnacki, R. M. (1994) Functional Analysis and Unsuccessful treatment of Tourette Syndrome in a Man With Mental Profound Retardation Behaviour Therapy. 25, 721-738.

Sebeok T.A. Signs: An Introduction to Semiotics: University of Toronto Press (1999).

Seitz, A., Uhrmacher, A. M., Damm, D.: Case-Based Prediction in Experimental Medical Studies. Artificial Intelligence in Medicine, 15: 255-273 (1999)

Sevre K., Rostrup M.: Undersokelser av hjertefrekvensvariabilitet og baroreflekssensivitet. Tidsskr Nor Laegeforen. Nr 26, 121: 3059-64 (2001).

Shafer, G.: A Mathematical Theory of Evidence. Princeton, NJ: Princeton University Press (1976).

Shahar Y. A framework for knowledge-based temporal abstractions. Artificial Intelligence, 90:79-133, 1997.

Shavlik, J. 1991. Finding genes by case-based reasoning in the presence of noisy case boundaries. In Proceedings of the 1991 DARPA Workshop on Case-Based Reasoning, volume 14, 861-866.

Sinus Arrhythmia * IEEE Transactions on Biomedical Engineering, 46, no. 9, (1999).

Shin K., and Sang-Yong H.: Improving Information Retrieval in MEDLINE by Modu-lating MeSH Term Weights, Lecture Notes in Computer Science, Springer Berlin / Heidelberg, 978-3-540-22564-5, Volume 3136, (2004) 388-394.

Shuguang L, Qing J, George C: Combining case-based and model-based reasoning: a formal specification. Seventh Asia-Pacific Software Engineering Conference, APSEC'00, 2000, 416

Sleeman, D.; Brown, J.S., (1982). Intelligent Tutoring Systems. AcademicPressLondon.

Silver D.E, Case Studies in Parkinson's Disease, http://www.pdasd.org/site/index.asp?page=88475&DL=7246 , Last referred on May (2007)

Smyth, B., Keane, M. T., Cunningham, P.: Hierarchical Case-Based Reasoning Integrating Case-Based and Decompositional Problem-Solving Techniques for Plant-Control Software Design. IEEE Trans. Knowl. Data Eng. 13(5): 793-812 (2001)

Smyth, B., Keane, M.T.: Adaptation-guided retrieval: questioning the similarity assumption in reasoning. Artificial Intelligence 102 (1998) 249-293

Smyth, B., and Keane, M. 1995. Experiments on adaptation-guided retrieval in case-based design. In Proceedings of First International Conference on Case-Based Reasoning.

Sohler, F., Hanisch, D., and Zimmer, R. (2004). New methods for joint analysis of biological networks and expression data. Bioinformatics, 20(10):1517-21.

Sollenborn, M., Nilsson, M.: Building a case base for stress diagnosis: An analysis of classified respiratory sinus arrhythmia sequences. In: Workshop proceedings of the 7th European Conference on Case Based Reasoning, ECCBR'04 (2004) 55-64

Sollenborn M., Nilsson M. Building a Case-Base for Stress Diagnosis: An Analysis of Classified Respiratory Sinus Arrhythmia Sequences. In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2004 p. 55-64

Sollenborn M., Nilsson M.: Building a Case-Base for Stress Diagnosis: An Analysis of Classified Respiratory Sinus Arrhythmia Sequences In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2004, P?

Sollenborn, M. and Funk, P.: Category-Based Filtering in Recommender Systems for Improved Performance in Dynamic Domains. In: Proceedings of the 2nd International Conference on Adaptive Hypermedia and Adaptive Web Based Systems, Malaga, Spain, May 436 - 439 (2002)

Song X., Petrovic S., Sundar S.: A Case-Based Reasoning Approach to Dose Planning in Radiotherapy, workshop 2007

Southwick, R.R.: Explaining reasoning: an overview of explanation in knowledge-based systems. The Knowledge Engineering Review 6:1 (1991) 1-19

Sowa, J. F., and Majumdar, A. K. (2003). Analogical Reasoning. Conceptual Structures for Knowledge Creation and Communication, LNAI 2746, eds. Aldo, A., Lex, W., and Ganter, B.

Staden, R., and McLachlan, A. 1982. Codon preferences and its use in identifying protein coding regions in long DNA sequences. Nucleic Acids Research 10(1):141-156.

Stefanelli, M., The socio-organizational age of artificial intelligence in medicine, Artificial Intelligence in Medecine, (23)1, 25-47, 2001.

Stefania M., Magni P., Roudsari A.V., Carson E.R., Bellazzi R. Integrating Different Methodologies for Insulin Therapy Support in Type 1 Diabetic Patients. In proceedings of the 8th Conference on Artificial Intelligence in Medicine in Europe. 121-130 Springer (2001)

Stoll, C., Dott, B., Alembik, Y., Roth, M.P.: Evaluation of routine prenatal diagnosis by a registry of congenital anomalies. Prenat Diagn, Vol. 15-9 (1995) 791-800

Stottler, R.H., Henke, A.L., King, J.A.: Rapid retrieval algorithms for case-based reasoning. In: Proc of 11th Int Joint Conference on Artificial Intelligence, Morgan Kaufmann, San Mateo (1989) 233-237

Subrahmanian V.S., Principles of multimedia database systems, Morgan Kaufmann, 1998.

Sullivan, K.M., Siadak, M.F.: Stem Cell Transplantation. In: Johnson, F.E., Virgo, K.S., Edge, S.B., Pellegrini, C.A., Poston, G.J., Schantz, S.P., Tsukamoto, N. (eds): Cancer Patient Follow-Up. Mosby Year-Book Publications, St Louis (1997) 490-501

Surma J., Vanhoof K. Integration rules and cases for the classification task. In M. Veloso and A. Aamodt, editors, Proc. 1st Conference on Case-Based Reasoning, volume 1010 of Lecture Notes in Computer Science, pages 325-334, Sesimbra, Portugal, October 1995. Springer.

Spyropoulos B & Papagounos G. (2000?). Some methodological Issues concerning Computer supported CBR in Medicine.

Swanson, D.R.: Information discovery from complementary literatures: Categorizing viruses as potential weapons. Journal of the American Society for Information Science Vol. 52(10) (2001) 797-812

Swanson, D.R., Smalheiser, N.R.: An interactive system for finding complementary literatures: a stimulus to scientific discovery. Artificial Intelligence Vol.9 (1997), 183-203

Swedberg Y, Noren JG. Analysis of caries status development in relation to socio-economic variables using a case-based system. Swed Dent J. 2001;25(2):81-8.

Swoboda, W.; Zwiebel, F. M.; Spitz, R.; Gierl L.: A case-based consultation system for postoperative management of liver-transplanted patients. In: Barahona P. et al. (eds.): MIE 1994, 1994, 530-534

The United States Renal data system, http://www.usrds.org

Torasso P. Multiple representations and multi-modal reasoning in medical diagnostic systems. Artif Intell Med. 2001 Aug;23(1):49-69. Review.

Towell, G. G.; Shavlik, J. W.; and Noordewier, M. O. 1990. Refinement of approximate domain theories by knowledge-based neural networks. In Proceedings of the Eighth National Conference on Artificial Intelligence, 861-866.

Tsukamoto N. Supporting system for CT diagnosis referring to previous cases. Nippon Igaku Hoshasen Gakkai Zasshi. 1993 Dec 25;53(12):1415-25. Japanese.

Tucker D.M., Liotti M.: Neuropsychological mechanisms of anxiety and depression. In: Boller F., Grafman J. (eds.):Handbook of Neuropsychology, Vol. 3. Elsevier (1989) 443-456

Turban E. Knowledge acquisition and validation. Expert Systems and Applied Artificial Intelligence, pages 117-166, 1992.

Turner, R. M.: Using schemas for diagnosis, Computer Methods and Programs in Biomedicine, Vol. 30, (1989) 199-208

Turner, R.M. (1988). Organizing and using schematic knowledge for medical diagnosis. In: J. Kolodner (ed.): First Workshop on CBR, ISBN: 0-934613-93-1, Morgan Kaufmann, San Mateo, pp. 435-446

Tuttle, M.S., Brown, S.H., Campbell, K.E., Carter, J.S., Keck, K.D., Lincoln, M., Nelson, S.J., Stone-braker, M.: The Semantic Web as Perfection Seeking: A View from Drug Terminology. In: Cruz, I.F., Secker, S., Euzenat, J., McGuinness, D. (eds.): First Semantic Web Working Symposium. Stan-ford (2001) 5-16

Tversky, A.: Features of similarity. Physiological review 84 (1977) 327-352.

Underwood J, Tate AR, Luckin R, Majos C, Capdevila A, Howe F, Griffiths J, Arus C. A prototype decision support system for MR spectroscopy-assisted diagnosis of brain tumours. Medinfo. 2001;10(Pt 1):561-5.

van den Brink PJ, Roelsma J, Van Nes EH, Scheffer M, Brock TC. Perpest model, a case-based reasoning approach to predict ecological risks of pesticides. Environ Toxicol Chem. 2002 Nov;21(11):2500-6.

Van der Spek, R., A. Spijkervet A., Knowledge management: dealing intelligently with knowledge, in: J. Liebowitz, L. C. Wilcox eds., Knowledge Management and Its integrative Elements, CRC Press, 1997.

Vera, M. N. & Vila, J. (1995). Techniques of Relaxation. In V. Caballo (Eds), Manual of therapy techniques: modification of the conduct. (pp. 161-181). Madrid: Veintiuno century of Spain publishing.

Vaseghi S.V.: Advanced signal processing and digital noise reduction, New York, John Wiley (1996).

Vial, Y., Tran, Ch., Addor, M.C., Hoblfeld, P.: Screening for foetal malformations: perform-ance of routine ultrasonography in the population of the Swiss Canton of Vaud. SWISS MED WKLY, Vol. 131 (2001) 490-4

Vonderholzer U., Al-Shajlawi A., Weske G., Feige B., Riemann D.: Are There Gender Differences in Objective and Subjective Sleep Measures? A study of Insomniacs and Healthy Controls. Depression and Anxiety 17 (2003) 162-172.

Vorobieva O., Rumyantsev A., Schmidt R. A CBR Solution for Missing Medical Data. Workshop 2007

Vorobieva O, Rumyantsev A, Schmidt R: Incremental development of an explanation model for exceptional dialysis patients. In: Bichindaritz I, Montani S (Eds.): Workshop CBR in the Health Science, 2006, 170-178, workshop 2006

Vorobieva, O., Schmidt, R. CBR Investigation of Therapy Inefficiencies. In: European Conference on Case Based Reasoning Workshop Proceedings. Madrid, Spain (2004) in press

Vorobieva O., Schmidt R. CBR Investigation of Therapy Inefficiencies In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2004 p. 64-72

Vorobieva, O., Schmidt, R.: CBR investigation of therapy inefficacy. In: Workshop proceedings of the 7th European Conference on Case Based Reasoning, ECCBR'04 (2004) 65-72

Vorobieva O., Gierl L., Schmidt R.: Adaptation Methods in an Endocrine Therapy Support System, In: Isabelle Bichindaritz and Cindy Marling (Eds.), Proceedings of the Workshop on Case-based Reasoning in the Health Sciences, ECCBR 2003, Trondheim, Norway, p79-88.

Vorobieva, O., Gierl, L., Schmidt, R. Adaptation Methods in an Endocrine Therapy Support System. In: International Conference on Case Based Reasoning Workshop Proceedings. Trondheim, Norway (2003) 79-88

Vorobieva Olga, Lothar Gierl, Rainer Schmidt. 2003. Case-based Adaptation Methods in Thyroid Therapy Support Programs. Medical Informatics Europe, Saint Malo, France.

Vorobieva O, Gierl L, Schmidt R: Case-based Adaptation in Medicine -Focusing on Hypothyroidism. In: Lees B (ed.): UK-Workshop on Case-based Reasoning (2002) 61-68

Wagaman, J. R., Miltenberger, R. G. & Williams, D. And, (1995). Treatment of to vocal tic by Differential Reinforcement. J. Behav. Ther. & Psychiat. 26 (1), 35-39.

Wall K., and Daniellson P.-E., A Fast Sequential Method for Polygonal Approximation of Digitized Curves, Comput. Graph. Image Process. 28, pp. 220-227, 1984

Watson, I., Perera, S.: A hierarchical case representation using context guided retrieval. Knowledge-Based Systems, 11:285-292, 1998.

Watson, I.: Applying Case-Based Reasoning: Techniques for Enterprise Systems. Morgan Kaufmann Publishers, Inc, San Francisco, California (1997)

Weber, R., Ashley K. D., and Bruninghaus S. B.: Textual case-based reasoning, The Knowledge Engineering Review, Vol. 00:0, 1-00., Cambridge University Press, Printed in UK (2005).

Weber, R.; Aha, D., Sandhu, N., and Munoz-Avila H.: A Textual Case-Based Reasoning Framework for Knowledge Management Application, In Proceedings of 9th GWCBR, (2001) 40-50.

West, G.M., McDonald, J.R.: An SQL-Based Approach to Similarity Assessment within a Relational Database. In: Ashley, K., Bridge, D.G. (eds.): Proceedings of ICCBR 03, Springer-Verlag, Lecture Notes in Artificial Intelligence 2689, Berlin, Heidelberg, New York (2003) 610-621

Wettschereck D., Aha D.W., Weighting Features, In: M. M. Veloso, A. Aamodt (Eds.): Case-Based Reasoning Research and Development, lncs 1010, Springer 1995, p. 347-358

Wilke, W., Smyth, B., Cunningham, P.: Using Configuration Techniques for Adaptation. In: Lenz,, M. et al. (eds.): Case-Based Reasoning Technology, From Foundations to Applications. Springer Berlin (1998) 139-168.

Witten, I.H., Moffat, A., Bell, T.C.: Managing Gigabytes: Compressing and Indexing Documents and Images. Morgan Kaufmann Publishers, San Francisco (1999)

Wilson D.R., Martinez T.R., Improved heterogeneous distance functions, Journal of Artificial Intelligence Research, 6, 1-34, 1997.

Wilson, D.C., Leake, D.B.: Mainting Case-Based Reasoners: Dimensions and Directions. Computational Intelligence Journal, Vo. 17, No. 2, May 2001

Wilson, D.C., Bradshaw, S.: CBR Textuality. Expert Update, Vol. 3, No. 1 (2000) 28-37

Wiratunga, N., Koychev, I., Massie, S.: Feature Selection and Generalisation for Retrieval of Textual Cases. In: Funk, P., Gonzalez Calero, P. (eds.): Proceedings of ECCBR 04. Lecture Notes in Artificial In-telligence 3155, Springer-Verlag, Berlin, Heidelberg, New York (2004) 806-820

Worring, M., Bagdanov, A., Gemerr, J., Geusebroek, J., Hoang, M., Schrieber, A., Snoek, C., Vendrig, J., Wielemaker, J., Muelders, A.: Interactive indexing and retrieval of multimedia content, In Proceedings of the 29th Annual Conference on Current Trends in Theory and Practice of Informatics, (2002) 135-148

Wright G. and Ayton P. Eliciting and modeling expert knowledge. Decision Support Systems, 3:1-26, 1987.

Wu D., Weber R., Abramson F. A Case-Based Framework for Leveraging NutriGenomics Knowledge and Personalized Nutrition Counseling. In: European Conference on Case-Based Reasoning Workshop Proceedings. Madrid, Spain (2004) pages 73-82.

Wyatt J.C.: Management of Explicit and Tacit Knowledge, Journal of the Royal Society of Medicine, Vol. 94, (2001)

Xiong, N. and Funk P.: A Novel Framework for Similarity Modeling in Case Based Reasoning, In CI2005, International Conference on Computational Intelligence, Calgary, Canada (2005)

Xu L.D. An integrated rule-and case-based approach to AIDS initial assessment. International Journal of Biomedical Computing, 40(3):197-207, Jan 1996.

Yang, Q. and Cheng, H: Case Mining from Large Databases. In Proceedings of the 5th International Conference on Case based Reasoning, Springer-Verlag: Berlin. 691-702 (2003)

Yearwood, J & R. Wilkinson: Retrieving cases for treatment advice in nursing using text representation and structured text retrieval. Artificial Intelligence in Medicine, Volume 9, Number 1, January 1997 79-99.

Zadeh, L.: Fuzzy sets as a basis for the theory of possibility. Fuzzy Sets and Systems, Vol. 1 (1978) 3-28.

Zadeh L: Fussy Sets. Information and Control 8 (3) (1965) 338-353.

Zezzatti A.O.O., Wagholikar A.: A CBR-based Innovative Medical Diagnostic Tool, workshop 2006

Zhang, J.: Selecting Typical Instances in Instance-Based Learning. In: Sleeman, D., Edwards, P. (eds.): Proceedings of the 9th International Workshop on Machine Learning (1992) 470-479

REFERENCES