This publication list uses antiquated HTML technology. Why not use an intelligent agent to recommend publications. Go to http://www.ics.uci.edu/~pazzani/Publications/Publications.html
PUBLICATIONS
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2003
Keogh, E., Chu, S., Hart, D., Pazzani, M. Segmenting Time Series: A Survey and Novel Approach.
Data Mining in Time Series Databases. World Scientific Publishing Company PDF
2002
Daniel Billsus, Clifford A. Brunk, Craig Evans, Brian Gladish and Michael Pazzani (2002). Adaptive interfaces for ubiquitous web Communications of The ACM, May 2002, Vol 45, No 5. pg 34-38. PDF
Chu, S., Keogh, E., Hart, D., Pazzani, M. (2002). Iterative Deepening Dynamic Time Warping for Time Series. The Second SIAM International Conference on Data Mining (SDM-02), 2002. PDF
Pazzani, M. and Billsus, D. (2002). Adaptive Web Site Agents. Journal of Agents and Multiagent systems,5(2) 205-218 PDF
TEST OF GOOGLE ADWORDS
Keogh, E., , K., Mehrotra S. & Pazzani, M (2002). Locally adaptive dimensionality reduction for indexing large time series databases. ACM Transactions on Database Systems, 27(2) 188-228. PDF
Keogh, E. & Pazzani, M. (2002). Learning the Structure of Augmented Bayesian Classifiers. International Journal on Artificial Intelligence Tools. Vol 11. No 4, 587-601. PDF
Miyahara, K. and Pazzani, M. J. (2002). Improvement of Collaborative Filtering with the Simple Bayesian Classifier. IPSJ Journal, Vol.43, No.11, Information Processing Society of Japan, November, 2002 PDF
Pazzani, M. (2002). Commercial Applications of Machine Learning for personalized wireless portals. Pacific Rim Conference on Artificial Intelligence, Springer. Pp 1-5.
PDF
2001
Bay, S. D. and Pazzani, M. J. (2001). Detecting Group Differences: Mining Contrast Sets. Data Mining and Knowledge Discovery. Vol 5, No 3 213-246. PDF.
Bay, S. D., Kibler, D., Pazzani, M. J., and Smyth, P. (2001). The UCI KDD Archive of Large Data Sets for Data Mining Research and Experimentation. In Information Processing Society of Japan Magazine. Volume 42, Number 5, pages 462-466. English language version reprinted in SIGKDD Explorations. Volume 2, Issue 2, pages 81-85, 2000. PDF.
Keogh, E., Chu, S., Hart, D. & Pazzani, M. (2001). An Online Algorithm for Segmenting Time Series. IEEE International Conference on Data Mining. PDF
Keogh, E., Chu, S., & Pazzani, M. (2001). Ensemble-Index: A New Approach to Indexing Large Databases. In 7th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, San Francisco. PDF
Keogh, E., Chakrabarti, K., Pazzani, M., & Mehrotra (2001). Locally adaptive dimensionality reduction for indexing large time series databases. SIGMOD 2001. Best paper award. PDF
Keogh, E., S. Chu & Pazzani, M. (2001). Using ensembles of representations for indexing large databases. International Workshop on Mining Spatial and Temporal data. In conjunction with the Fifth Pacific-Asia Conference on Knowledge Discovery and Data Mining (PAKDD-01). PDF
Keogh, E. & Pazzani, M. (2001). Derivative Dynamic Time Warping. In First SIAM International Conference on Data Mining (SDM'2001), Chicago, USA. PDF
M. J. Pazzani, S. Mani, W. R. Shankle (2001). Acceptance of Rules Generated by Machine Learning among Medical Experts. Methods of Information in Medicine; 40: 380-385. PDF
George Buchanan, Sarah Farrant, Matt Jones, Harold W. Thimbleby, Gary Marsden, Michael J. Pazzani: Improving mobile internet usability. WWW 2001: 673-680. HTML PDF
G. Webb, Michael J. Pazzani, Daniel Billsus, (2001).Machine learning for user modeling.
User Modeling and User-Adapted Interaction 11: 19-20, 2001.
PDF
2000
Bay, S. D. and Pazzani, M. J. (2000). Discovering and Describing Category Differences: What makes a discovered difference insightful?. In Proceedings of the Twenty Second Annual Meeting of the Cognitive Science Society. PDF.
Keogh, E., Chakrabarti, K., Pazzani, M. & Mehrotra, S (2000) Dimensionality Reduction for Fast Similarity Search in Large Time Series Databases. Knowledge and Information Systems 3(3): 263-286. PDF
Bay, S. D. and Pazzani, M. J. (2000). Characterizing Model Errors and Differences. In Proceedings of the Seventeenth International Conference on Machine Learning. PDF.
Bay, S. D. and Pazzani, M. J. (2000). Characterizing Model Performance in the Feature Space. In ICML 2000 Workshop on What Works Well Where?. PDF.
Keogh, E. & Pazzani, M. (2000) Scaling up Dynamic Time Warping for Datamining Applications. In 6th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, Boston, 2000. PDF
Keogh, E. & Pazzani, M. (2000) A simple dimensionality reduction technique for fast similarity search in large time series databases.In the Fourth Pacific- Asia Conference on Knowledge Discovery and Data Mining. Kyoto, Japan. PDF.
Michael J. Pazzani: Representation of electronic mail filtering profiles: a user study. Intelligent User Interfaces 2000: 202-206 PDF
Daniel Billsus, Michael J. Pazzani, James Chen: A learning agent for wireless news access. Intelligent User Interfaces 2000: 33-36 PDF
Koji Miyahara, Michael J. Pazzani: Collaborative Filtering with the Simple Bayesian Classifier. PRICAI 2000: 679-689 PDF.
Pazzani, M. (2000). Learning with Globally Predictive Tests. New Generation Computing 18(1): 28-38 PDF Postscript
Pazzani, M. (2000). Knowledge discovery from data? IEEE Intelligent Systems 15(2): 10-13 (2000) PDF
Billsus, D., and Pazzani, M. (2000). "User Modeling for Adaptive News Access".
User Modeling and User-Adapted Interaction. 10:2/3. 147-180 PDF
1999
Lathrop, R. & Pazzani, M. (1999). Combinatorial Optimization in Rapidly Mutating Drug-Resistant Viruses. Journal of Combinatorial Optimization. 3, 301-320.
PDF
Postscript
Billsus, D. and Pazzani, M. (1999). "A Hybrid User Model for News Story Classification", Proceedings of the Seventh International Conference on User Modeling (UM '99), Banff, Canada. PDF Postscript
Billsus, D. and Pazzani, M. (1999). "A Personal News Agent that Talks, Learns and Explains", Proceedings of the Third International Conference on Autonomous Agents (Agents '99), Seattle, Washington. PDF Postscript
Bay, S. D. and Pazzani, M. J. (1999). Detecting Change in Categorical Data: Mining Contrast Sets. In Proceedings of the Fifth International Conference on Knowledge Discovery and Data Mining. PDF Postscript
Pazzani, M. J. and Bay, S. D. (1999). The Independent Sign Bias: Gaining Insight from Multiple Linear Regression. In Proceedings of the Twenty-First Annual Meeting of the Cognitive Science Society. PDF Postscript Overheads PDF
Pazzani, M. and Billsus, D. (1999). "Adaptive Web Site Agents". Proceedings of the Third International Conference on Autonomous Agents (Agents '99), Seattle, Washington. PDF Postscript
Keogh, E. & Pazzani, M. (1999). Relevance Feedback Retrieval of Time Series Data. The Twenty-Second Annual International ACM-SIGIR Conference on Research and Development in Information Retrieval. PDF Postscript
Eamonn J. Keogh, Michael J. Pazzani: (1999). Scaling up Dynamic Time Warping to Massive Datasets. Principles and Practice of Knowledge Discovery in Databases, Prague, Czech Republic. PDF Postscript
Eamonn J. Keogh, Michael J. Pazzani: (1999). An indexing scheme for similarity search in large time series databases. The 11th International Conference on Scientific and Statistical Database Management. Cleveland, Ohio. PDF Postscript
S. Mani, M.B. Dick, M.J. Pazzani, E.L. Teng, D. Kempler, I.M. Taussig (1999). Refinement of Neuro-Psychological Tests for Dementia Screening in a Cross Cultural Population Using Machine Learning. Joint European Conference on Artificial Intelligence in Medicine and Medical Decision Making Aalborg, Denmark. PDF
Pazzani, M. & Billsus, D. (1999). Evaluating Adaptive Web site Agents. Workshop on Recommender Systems Algorithms and Evaluation, 22nd International Conference on Research and Development in Information Retrieval. PDF Postscript
Keogh, E. & Pazzani. M. (1999). Learning augmented Bayesian classifiers: A comparison of distribution-based and classification-based approaches. Uncertainty 99, 7th. Int'l Workshop on AI and Statistics, Ft. Lauderdale, Florida, 225-230. Postscript PDF
Merz, C. & Pazzani, M. (1999). A Principal Components Approach to Combining Regression Estimates Machine Learning. 36, 9-32. PDF Postscript
Pazzani, M. (1999). A Framework for Collaborative, Content-Based and Demographic Filtering. Artificial Intelligence Review. 13(5-6): 393-408 PDF
Mani, S., Shankle, R., Dick, M and Pazzani, M. (1999) Two-Stage Machine Learning Model for Guideline Development Artificial Intelligence in Medicine, 16, 51-80. PDF
Lathrop, R.H., Steffen, N.R., Raphael, M., Deeds-Rubin, S., Pazzani, M.J., Cimoch, P.J., See, D.M., Tilles, J.G.; (1999) Knowledge-based Avoidance of Drug-Resistant HIV Mutants. AI Magazine, volume 20, number 1, Spring 1999, pages 13-25. PDF Postscript
Ian Soboroff, Charles K. Nicholas, Michael J. Pazzani: Workshop on Recommender Systems: Algorithms and Evaluation. SIGIR Forum 33(1): 36-43 (1999) HTML
Subramani Mani, Malcolm B. Dick, Michael J. Pazzani, Evelyn L. Teng, Daniel Kempler, I. Maribell Taussig:
Refinement of Neuro-psychological Tests for Dementia Screening in a Cross Cultural Population Using Machine Learning.
Lecture Notes in Artificial Intelligence: Artificial Intelligence in Medicine, AIMDM'99, Vol. 1620, p326-335.
PDF
1998
Keogh, E., & Pazzani, M. (1998). An enhanced representation of time series which allows fast and accurate classification, clustering and relevance feedback. Proceedings of the Fourth International Conference of Knowledge Discovery and Data Mining. pp 239-241, AAAI Press. Postscript PDF
Lathrop, R., Steffen, N., Raphael, M., Deeds-Rubin, S., Pazzani, M., Cimoch, P., See, D., Tilles, J. (1998) Knowledge-based Avoidance of Drug-Resistant HIV Mutants Proceedings of the 10th Conference on Innovatiove Applications of Artificial Intelligence, Madison, Wisc. Postscript PDF
Billsus, D. & Pazzani, M. (1998). Learning Collaborative Information Filters. Proceedings of the International Conference on Machine Learning. Morgan Kaufmann Publishers. Madison, Wisc. PDF
Webb, G. & Pazzani, M. (1998). Adjusted Probability Naive Bayesian Induction. 11th Australian Joint Conference on Artificial Intelligence. Brisbane, QLD. Australia PDF
Keogh, E. & Pazzani, M. (1998). An enhanced representation of time series which allows fast and accurate classification, clustering and relevance feedback. AAAI Workshop on Predicting the Future: AI Approaches to Time-Series Analysis. Madison, Wisc. PDF
Pazzani, M. (1998). Learning with Globally Predictive Tests. The First International Conference on Discovery Science Fukuoka, Japan PDF
Mani, S. and Pazzani, M. (1998). Guideline Generation from Data by Induction of Decision Tables Using a Bayesian Network Framework JAMIA supplement p518-522, 1998.PDF
Shankle, R., Mani, S., Dick, M and Pazzani, M. (1998) Simple Models for Estimating Dementia Severity Using Machine Learning MedInfo'98: 9th World Congress on Medical Informatics, Seoul, Korea, August 1998, proceedings. PDF
Cimoch, P.J., See, D.M., Pazzani, M.J., Reiter, W.M., Lathrop, R.H.,
Fasone, W.A, Tilles, J.G.; (1998). Application of a genotypic
driven rule-based expert artificial intelligence computer system in
treatment experienced HIV-infected patients. Immunologic and
virologic response." Proc. of the 12th World AIDS Conf., Geneva,
Switzerland, extended abstract #32297
Postscript.
PDF.
1997
Pazzani, M., (1997) Comprehensible Knowledge Discovery: Gaining Insight from Data. First Federal Data Mining Conference and Exposition. pg 73-82. Washington, DC. PDF Overheads PDF
Pazzani, M., Iyer, R., See, D., Shroeder, E., & Tilles, J. (1997). CTSHIV: A Knowledge-based System in the Management of HIV-infected patients. Proceedings of the International Conference on Intelligent Information Systems PDF Postscript
Billsus, Daniel & Pazzani, M. (1997) Learning Probabilistic User Models. in Workshop Notes of "Machine Learning for User Modeling", Sixth International Conference on User Modeling, Chia Laguna, Sardinia. PDF Postscript
Merz, C., & Pazzani M. (1997). Combining Neural Network Regression Estimates Using Principal Components. "Preliminary Papers of the 6th International Workshop on Artificial Intelligence and Statistics". PDF Postscript
Domingos, P., & Pazzani, M. (1997). Beyond Independence: Conditions for the Optimality of the Simple Bayesian Classifier. Machine Learning. 29, 103-130. PDF. Postscript. PDF.
Pazzani, M., See, D., Shroeder, E., & Tilles, J. (1997). Application of an Expert System in the Management of HIV-infected patients. Journal of AIDS and Human Retrovirology. 15:356-362. PDF
Pazzani, M. (1997). Searching for dependencies in Bayesian classifiers. Artificial Intelligence and Statistics IV, Lecture Notes in Statistics, Springer-Verlag: New York. PDF Postscript Overheads HTML
Pazzani, M., Mani, S., & Shankle, W. R. (1997). Beyond concise and colorful: learning intelligible rules. Proceedings of the Third International Conference on Knowledge Discovery and Data Mining, Newport Beach, CA. AAAI Press, 235-238. PDF
Pazzani, M., Mani, S. & Shankle, W. R. (1997). Comprehensible knowledge-discovery in databases. In M. G. Shafto and P. Langley (Ed.), Proceedings of the Nineteenth Annual Conference of the Cognitive Science Society, pp. 596-601. Lawrence Erlbaum. PDF
Pazzani M., & Billsus, D. (1997). Learning and Revising User Profiles: The identification of interesting web sites. Machine Learning 27, 313-331. PDF
Merz, C., & Pazzani, M. (1997). Combining Neural Network Regression Estimates Using Principal Components. The Sixth International Workshop on Artificial Intelligence and Statistics. PDF Postscript
Mani, M., McDermott, S., & Pazzani, M. (1997) Generating Models of Mental Retardation from Data with Machine Learning Proceedings IEEE Knowledge and Data Engineering Exchange Workshop (KDEX-97), p114-119, IEEE Computer Society. PDF Postscript
Mani, M., McDermott, S., & Pazzani, M. (1997). Detecting Mental Retardation in Newborns and Infants: A Machine Learning Approach. Pediatrics Supplement Vol. 100, No. 3, part 2, p443 PDF Postscript
Merz, C., & Pazzani, M. (1997). Handling Redundancy in Ensembles of Learned Models Using Principal Components. AAAI Workshop on Integrating Multiple Models. PDF Postscript
M. Ackerman, D. Billsus, S. Gaffney, S. Hettich, G. Khoo, D. Kim, R. Klefstad, C. Lowe, A. Ludeman, J. Muramatsu, K. Omori, M. Pazzani , D. Semler, B. Starr, & P. Yap (1997). Learning Probabilistic User Profiles: Applications to Finding Interesting Web Sites, Notifying Users of Relevant Changes to Web Pages, and Locating Grant Opportunities. AI Magazine 18(2) 47-56. PDF
W.R. Shankle, Subramani Mani, Michael J. Pazzani, and Padhraic Smyth. (1997) ``Detecting very early stages of Dementia from normal aging with Machine Learning methods''. In Keravnou, E., Garbay, C., Baud, R., and Wyatt, editors, Lecture Notes in Artificial Intelligence: Artificial Intelligence in Medicine, AIME97, volume 1211, pages 73-85, Springer PDF Postscript
W.R. Shankle, Subramani Mani Michael J. Pazzani, and Padhraic Smyth. (1997) ``Dementia Screening with Machine Learning methods.'' In Intelligent Data Analysis in Medicine and Pharmacology, Eds. Elpida Keravnou, Nada Lavrac and Blaz Zupan, Kluwer Academic Publishers. PDF Postscript
Subramani Mani, W.R. Shankle, Michael J. Pazzani, Padhraic Smyth, and Malcolm B. Dick. (1997) ``Differential Diagnosis of Dementia: A Knowledge Discovery and Data Mining (KDD) Approach''. American Medical Informatics Association (AMIA) Annual Fall Symposium, Nashville, HTML PDF
Shankle, W.R., Mani, S., Pazzani, M. J. and Smyth, P. (1997). Use of a Computerized Patient Record Database of Normal Aging and Very Mildly Demented Subjects to Compare Classification Accuracies Obtained with Machine Learning Methods and Logistic Regression. Computing Science and Statistics, 29: 201-209.
Pazzani, M., Muramatsu J., & Billsus, D. (1996). Syskill & Webert: Identifying interesting web sites. AAAI Spring Symposium. Stanford, CA. HTML PDF
Starr, B., Ackerman, M., & Pazzani, M. (1996). Do I Care? -- Tell Me What's Changed on the Web. AAAI Spring Symposium. Stanford, CA. PDF Postscript
Merz, C. J., Pazzani, M. J. (1996) Handling Redundancy in Ensembles of Learned Models Using Principal Components. Presented at the Workshop on Integrating Multiple Learned Models for Improving and Scaling Machine Learning Algorithms at AAAI-96. PDF Postscript
Shankle, R., Datta, P., & Pazzani, M. (1996). Applying machine learning to an Alzheimer's database, AAAI-96 Spring Symposium AI in Medicine: Applications of Current Technologies. Stanford, CA. PDF Postscript
Ali, K., & Pazzani M. (1996). Error Reduction through Learning Multiple Descriptions Machine Learning, 24:3. Postscript PDF
Merz, C., Pazzani, M., & Danyluk, A. (1996). Tuning Numeric Parameters to troubleshoot a telephone network. IEEE Expert, Feb. 1996, pg. 44-49. PDF
Shankle, W.R., Datta, P., Dillencourt, M., & Pazzani, M. (1996). Improving Dementia Screening Tests with Machine Learning Methods. Alzheimer's Research. PDF Postscript
Pazzani, M. (1996). Review of "Inductive Logic Programming". Machine Learning, 23, 103-108. PDF
Yamazaki, T., Pazzani, M., & Merz, C. (1996). Acquiring and updating hierarchical knowledge for machine translation based on a clustering technique. In Wermter, Riloff & Scheler (Eds.) Connectionist, Statistical, and Symbolic Approaches to Learning for Natural Language Processing. PDF
Domingos, P., & Pazzani, M. (1996). Beyond Independence: Conditions for the Optimality of the Simple Bayesian Classifier. Proceedings of the International Conference on Machine Learning. PDF. Postscript.
Pazzani, M., Muramatsu J., & Billsus, D. (1996). Syskill & Webert: Identifying interesting web sites. Proceedings of the National Conference on Artificial Intelligence, Portland, OR. Slides HTML HTML Postscript PDF
Billsus, D., & Pazzani, M. (1996). Revising user profiles: The search for interesting Web sites. International Multi-Strategy Learning Conference. Harpers Ferry, VA. PDF Postscript
Pazzani, M. (1996). Constructive Induction of Cartesian Product Attributes. Information, Statistics and Induction in Science. Melbourne, Australia. PDF Postscript
Starr, B., Ackerman, M., & Pazzani, M. (1996). "Do-I-Care: A Collaborative Web Agent." Proceedings of the ACM Conference on Human Factors in Computing Systems (CHI'96), April, 1996, pp. 273-274. PDF HTML
Merz, C., & Pazzani, M. (1996). Combining neural network regression estimates with regularized linear weights. Advances in Neural Information Processing Systems 9, Proceedings of the 1996 Conference. MIT Press, 564-570.
PDF
Postscript of Final 1997 Version
1995
Ali, K., Brunk, C., & Pazzani, M. (1995). Learning Multiple Relational Rule-based Models. In "Preliminary Papers of the 5th International Workshop on Artificial Intelligence and Statistics". Fort Lauderdale, FL. PDF Postscript
Pazzani, M. (1995). Searching for dependencies in Bayesian classifiers. In "Preliminary Papers of the 5th International Workshop on Artificial Intelligence and Statistics". Fort Lauderdale, FL. PDF Postscript
Hirschberg, D., Pazzani. M., & Ali, K. (1995). Average case analysis of k-CNF and k-DNF learning algorithms. In S. Hanson, M. Kearns, T. Petsche and R. Rivest Computational Learning Theory and Natural Learning Systems: Constraints and Prospects. Cambridge, MA: MIT Press. PDF Postscript
Ali, K., & Pazzani, M. (1995). HYDRA-MM: Learning Multiple Descriptions to Improve Classification Accuracy. International Journal on Artificial Intelligence Tools, 4. PDF Postscript
Yamazaki, T., Pazzani, M., & Merz, C. (1995). Learning Hierarchies from Ambiguous Natural Language Data, Proceedings of the 12th International Conference of Machine Learning. PDF
Brunk, C., & Pazzani, M. (1995). A Linguistically-Based Semantic Bias for Theory Revision Proceedings of the 12th International Conference of Machine Learning. PDF Postscript
Hume, T., & Pazzani, M. (1995). Learning Sets of Related Concepts: A Shared Task Model. Proceedings of the Sixteen Annual Conference of the Cognitive Science Society. Pittsburgh, PA: Lawrence Erlbaum. PDF HTML Slides HTML
Pazzani, M. (1995). An iterative-improvement approach for the discretization of numeric attributes in Bayesian classifiers. Proceedings of the First International Conference on Knowledge Discovery and Data Mining. Montreal: AAAI Press PDF
Pazzani, M., Nguyen, L., & Mantik, S. (1995). Learning from hotlists and coldlists: Towards a WWW information filtering and seeking agent. In Proceedings of the Seventh International Conference on Tools with Artificial Intelligence
HTML.
PDF.
1994
Pazzani, M. (1994). Learning causal patterns: Making a transition from data-driven to theory-driven learning. In Ryszard Michalski & Georghe Tecuci (Eds.) Machine Learning (Vol. IV): A Multi-Strategy Approach. San Mateo, CA: Morgan Kaufmann. PDF of 1993 Journal Version.
Murphy, P., & Pazzani, M. (1994). Revision of production system rule-bases. Proceedings of the 11th International Conference of Machine Learning, New Brunswick. Morgan Kaufmann, 199-200. PDF Postscript
Murphy, P. & Pazzani, m. (1994). Automated Revision of CLIPS Rule-Bases In Proceedings of "Proccedings of the Third Conference on CLIPS", September 12-14, 1994, Tx. PDF
Pazzani, M., Merz, C., Murphy, P., Ali, K., Hume, T., & Brunk, C. (1994). Reducing Misclassification Costs. Proceedings of the 11th International Conference of Machine Learning, New Brunswick. Morgan Kaufmann, 217-225. PDF Slides HTML Postscript
Ali, K., Brunk, C., & Pazzani, M. (1994). On Learning Multiple Descriptions of a Concept. In Proceedings of the Sixth International Conference on Tools with Artificial Intelligence. New Orleans, LA: IEEE Press. PDF Postscript
Merz, C., & Pazzani, M. (1994). Parameter Tuning for the MAX Expert System, In Proceedings of the Sixth International Conference on Tools with Artificial Intelligence. New Orleans, LA: IEEE Press. pp. 632-639. PDF
Pazzani, M., Murphy, P., Ali, K., & Schulenburg, D. (1994). Trading off coverage for accuracy in forecasts: Applications to clinical data analysis. AAAI Symposium on AI in Medicine (pp. 106-110). Stanford, CA. Overheads PDF PDF
Pazzani, M. (1994). Guest Editorial "Computational models of human learning". Machine Learning, 12. PDF
Murphy, P., & Pazzani, M. (1994). Exploring the decision forest: An empirical investigation of OCCAM's razor in decision tree induction. Journal of Artificial Intelligence, 1, 257-275. PDF Postscript
Giovanni Semeraro, Floriana Esposito, Donato Malerba, Clifford Brunk,
Michael Pazzani: (1994) Avoiding Non-Termination when Learning Logical
Programs: A Case Study with FOIL and FOCL. In Laurent Fribourg, Franco
Turini (Eds.): Logic Programming Synthesis and Transformation -
Meta-Programming in Logic. 4th Internation Workshops, LOPSTR'94 and
META'94, Pisa, Italy, June 20-21, 1994, Proceedings. Lecture Notes in
Computer Science, Vol. 883, Springer.
1993
Pazzani, M. (1993). Reply to Review of "Creating a memory of causal relationships". Machine Learning, 11. PDF
Yamazaki, Takefumi & Pazzani, Michael (1994). A Cluster Analysis Approach to Learning a Semantic Hierarchy for Machine Translation. ML-COLT '94 Workshop on Constructive Induction and Change of Representation. PDF Postscipt
Pazzani, M., & Brunk, C. (1993). Finding Accurate Frontiers: A Knowledge-Intensive Approach to Relational Learning. The National Conference on Artificial Intelligence (pp. 328-334). Washington, D.C: AAAI Press. Postscript Overheads PDF PDF
Ali, K., & Pazzani, M. (1993). HYDRA: A noise-tolerant relational concept learning algorithm. The International Joint Conference on Artificial Intelligence, Chambery, France. PDF Postscript
Wogulis, J., & Pazzani, M. (1993). A methodology for evaluating theory revision systems: Results with AUDREY II. The International Joint Conference on Artificial Intelligence, Chambery, France. PDF Postscript
Murphy, P., & Pazzani, M. (1993). Exploring the decision forest. Computational Learning and Natural Learning, Provincetown, MA PDF Postscript
Pazzani, M. (1993). Learning causal patterns: Making a transition from data-driven to theory-driven learning. Machine Learning, 11, 173-194
PDF.
1992
Ali K. and Pazzani M. (1992). Reducing the small disjuncts problem by learning probabilistic concept descriptions. In Petsche, T., Hanson, S.J. & Shavlik, J. (Eds), Computational Learning Theory and Natural Learning Systems, Vol. 3. Cambridge, Massachusetts. MIT Press. PDF
Brunk, C. & Pazzani, M. (1992). Knowledge Acquisition with a Knowledge-Intensive Machine Learning System. Proceedings of the Seventh Knowledge Acquisition for Knowledge-Based Systems Workshop. (4.1-4.20) Banff, Alberta: SRDG Publications. PDF Postscript
Pazzani, M. (1992). When Prior Knowledge Hinders Learning. AAAI Workshop on Constraining learning with Prior Knowledge. San Jose, CA. PDF
Pazzani, M., & Kibler, D. (1992). The utility of prior knowledge in inductive learning. Machine Learning, 9 , 54-97. PDF
Pazzani, M., & Sarrett, W. (1992). A framework for average case analysis of conjunctive learning algorithms. Machine Learning, 9, 349-372. PDF
Pazzani, M., Brunk, C., & Silverstein, G. (1992). A information-based approach to combining empirical and explanation-based learning. In S. Muggleton (Ed.). Inductive Logic Programming. (pp. 373-394). London: Academic Press.
Hirschberg, D., & Pazzani, M. (1992). Average case analysis of k-CNF learning algorithms. Proceedings of the Tenth International Conference on Machine Learning (pp. 206-211). Aberdeen, Scotland: Morgan Kaufmann.
PDF
1991
Hirschberg, D., Pazzani, M., & Ali, K. (1991). Average case analysis of k-CNF and k-DNF learning algorithms. Second International Workshop on Computational Learning Theory and Natural Learning Systems: Constraints and Prospects. Berkeley, CA. PDF Postscript of Final 1995 version
Fisher, D., & Pazzani, M. (1991). Computational models of concept learning. In D. Fisher, M. Pazzani, & P. Langley (Eds.), Concept formation: Knowledge and experience in unsupervised learning. San Mateo, CA: Morgan Kaufmann.
Fisher, D., Pazzani, M., & Langley, P. (1991). Concept formation: Knowledge and experience in unsupervised learning. San Mateo, CA: Morgan Kaufmann. Order this book from the publisher
Pazzani, M. (1991). A computational theory of learning causal relationships. Cognitive Science, 15, 401-424. PDF
Pazzani, M. (1991). Learning to predict and explain: An integration of similarity-based, theory-driven and explanation-based learning. Journal of the Learning Sciences, 1, 2, 153-199.
Pazzani, M. (1991). The influence of prior knowledge on concept acquisition: Experimental and computational results. Journal of Experimental Psychology: Learning, Memory & Cognition, 17, 3, 416-432. PDF Preprint PDF Final
Pazzani, M., & Brunk, C. (1991). Detecting and correcting errors in rule-based expert systems: an integration of empirical and explanation-based learning. Knowledge Acquisition, 3, 157-173. PDF
Pazzani, M., Brunk, C., & Silverstein, G. (1991). A knowledge-intensive approach to learning relational concepts. Proceedings of the Eighth International Workshop on Machine Learning (pp. 432-436). Evanston, IL: Morgan Kaufmann.
Silverstein, G., & Pazzani, M. (1991). Relational clichés: Constraining constructive induction during relational learning. Proceedings of the Eighth International Workshop on Machine Learning (pp. 203-207). Evanston, IL: Morgan Kaufmann. PDF
Cain, T., Pazzani, M., & Silverstein, G. (1991). Using domain knowledge to influence similarity judgments. Proceedings of the Case-Based Reasoning Workshop. Washington, DC: Morgan Kaufmann. Overheads PDF
Brunk, C., & Pazzani, M. (1991). An investigation of noise tolerant relational learning algorithms. Proceedings of the Eighth International Workshop on Machine Learning (pp. 389-391). Evanston, IL: Morgan Kaufmann. Postscript PDF
Murphy, P., & Pazzani, M. (1991). ID2-of-3: Constructive induction of m-of-n discriminators for decision trees. Proceedings of the Eighth International Workshop on Machine Learning (pp. 183-187). Evanston, IL: Morgan Kaufmann. PDF Postscript
Fisher, D., & Pazzani, M. (1991). Theory-guided concept formation. In D. Fisher, M. Pazzani, & P. Langley (Eds.), Concept formation: Knowledge and experience in unsupervised learning. San Mateo, CA: Morgan Kaufmann.
Fisher, D., & Pazzani, M. (1991). Concept formation in context. In D. Fisher, M. Pazzani, & P. Langley (Eds.), Concept formation: Knowledge and experience in unsupervised learning. San Mateo, CA: Morgan Kaufmann.
1990
Pazzani, M. J., & Brunk, C. A. (1990). Detecting and correcting errors in rule-based expert systems: an integration of empirical and explanation-based learning. Knowledge Acquisition for Knowledge-Based Systems Workshop. PDF of 1991 journal version
Pazzani, M., & Silverstein, G. (1990). Feature selection and hypothesis selection: Models of induction. Proceedings of the Twelfth Annual Conference of the Cognitive Science Society. (pp. 221-228). Cambridge, MA: Lawrence Erlbaum. PDF
Pazzani, M. (1990). Creating a memory of causal relationships: An integration of empirical and explanation-based learning methods. Hillsdale, NJ: Lawrence Erlbaum Associates. Order this book from the publisher
Pazzani, M. (1990). Learning in order to avoid search in logic programming. Computers and Mathematics with Applications, 2, 10, 101-110.
Pazzani M., & Dyer, M. (1990). Memory organization and explanation-based learning. International Journal of Expert Systems, 2, 3, 331-358.
Pazzani, M., & Flowers, M. (1990). Scientific discovery in the layperson. In J. Shrager & P. Langley (Eds.), Computational models of scientific discovery and theory formation. San Mateo, CA: Morgan Kaufmann. PDF
Billman, D., Fisher, D., Gluck, M., Langley, P., & Pazzani, M. (1990). Computational models of category learning. Proceedings of the Twelfth Annual Conference of the Cognitive Science Society. (pp. 989-996). Cambridge, MA: Lawrence Erlbaum.
1989
Pazzani, M. (1989). Indexing strategies for goal specific retrieval of cases. Proceedings of the Case-Based Reasoning Workshop (pp. 31-35). Pensacola Beach, FL: Morgan Kaufmann. Overheads PDF PDF
Pazzani, M. (1989). Explanation-based learning with weak domain theories. Proceedings of the Sixth International Workshop on Machine Learning (pp. 72-74). Ithaca, NY: Morgan Kaufmann. PDF
Pazzani, M. (1989). Learning from historical precedent. Artificial Intelligence Systems in Government Conference. (pp. 150-156). Washington, DC. Overheads PDF
Pazzani, M. (1989). Explanation-based learning of diagnostic heuristics: A comparison of learning from success and failure. Artificial Intelligence Systems in Government Conference (pp. 164-169). Washington DC.
Pazzani, M., & Schulenburg, D. (1989). The influence of prior theories on the ease of concept acquisition. Proceedings of the Eleventh Annual Conference of the Cognitive Science Society (pp. 812-819). Ann Arbor, MI: Lawrence Erlbaum PDF
Pazzani, M. (1989). Detecting and correcting errors of omission after explanation-based learning. Proceedings of the Eleventh International Joint Conference on Artificial Intelligence (pp. 713-718). Detroit, MI: Morgan Kaufmann. PDF Overheads PDF
Pazzani, M. (1989). Learning fault diagnosis heuristics from device descriptions. In Y. Kodratoff & R. Michalski (Eds.), Machine Learning: An artificial intelligence approach (Vol. III). San Mateo, CA: Morgan Kaufmann.
Pazzani, M., & Sarrett, W. (1989). Average case analysis of conjunctive learning algorithms. Proceedings of the Seventh International Conference on Machine Learning (pp. 339-347). Austin, TX: Morgan Kaufmann. PDF of 1992 Journal Version
Sarrett, W., & Pazzani, M. (1989). One-sided algorithms for integrating empirical and explanation-based learning. Proceedings of the Sixth International Workshop on Machine Learning (pp. 26-28). Ithaca, NY: Morgan Kaufmann. PDF
Schulenburg, D., & Pazzani, M. (1989). Explanation-based learning of indirect speech act interpretation rules. Proceedings of the First International Lexical Acquisition Workshop. Detroit, MI. PDF
Pazzani, M. (1989). Creating high-level knowledge structures from simple elements. In K. Morik (Ed.), Knowledge representation and organization in machine learning, Lecture notes in Artificial Intelligence, No 347. New York: Springer-Verlag.
1988
Pazzani, M. (1988). Explanation-based learning for knowledge-based systems. In B. Gaines & J. Boose (Eds.), Knowledge acquisition for knowledge-based systems (pp. 215-238). London: Academic Press.
Pazzani, M. (1988). Selecting the best explanation for explanation-based learning. AAAI Symposium on Explanation-Based Learning (pp. 156-170). Stanford University. PDF
Pazzani, M. (1988). Learning during plan recognition. AAAI Workshop on Plan Recognition. (pp. 1-5). St. Paul, MN.
Pazzani, M. (1988). Integrated learning with incorrect and incomplete theories. Proceedings of the Fifth International Conference on Machine Learning (pp. 291-298). Ann Arbor, MI: Morgan Kaufmann.
Pazzani, M. (1988). Integrating empirical and explanation-based learning methods in OCCAM. Proceedings of the Third European Working Session on Learning (pp. 147-166). Glasgow, Scotland: Pitman.
1987
Pazzani, M. (1987). Creating high-level knowledge structures from primitive elements. Knowledge Representation and Knowledge Organization in Machine Learning Workshop. Geseke, Germany.
Pazzani, M. (1987). Inducing causal and social theories: a prerequisite for explanation-based learning. Proceedings of the Fourth International Workshop on Machine Learning (pp. 230-241). Irvine, CA: Morgan Kaufmann. PDF
Pazzani, M., Dyer, M., & Flowers, M. (1987). Using prior learning to facilitate the learning of new causal theories. Proceedings of the Tenth International Joint Conference on Artificial Intelligence. (pp. 277-279). Milan, Italy: Morgan Kaufmann. PDF
Pazzani, M., & Dyer, M. (1987). A comparison of concept identification in human learning and network learning with the generalized delta rule. Proceedings of the Tenth International Joint Conference on Artificial Intelligence (pp. 147-151). Milan, Italy: Morgan Kaufmann. PDF
Pazzani, M. (1987). Failure-driven learning of fault diagnosis heuristics. IEEE Transactions on Systems, Man and Cybernetics: Special issue on Causal and Strategic Aspects of Diagnostic Reasoning, 17, 3, 380-394.
Pazzani, M. (1987). Explanation-based learning for knowledge-based systems. International Journal of Man-Machine Studies, 26, 413-433.
1986
Pazzani, M., & Brindle. A. (1986). Automated diagnosis of attitude control anomalies. Proceedings of the Annual AAS Guidance and Control Conference. Keystone, CO: American Astronautical Society. PDF
Pazzani, M. (1986). Refining the knowledge base of a diagnostic expert system: An application of failure-driven learning. Proceedings of the Fifth National Conference on Artificial Intelligence (pp. 1029-1035). Philadelphia, PA: Morgan Kaufmann. PDF
Pazzani, M., Dyer, M., & Flowers, M. (1986). The role of prior causal theories in generalization. Proceedings of the Fifth National Conference on Artificial Intelligence (pp. 545-550). Philadelphia, PA: Morgan Kaufmann.
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1985
Pazzani, M. (1985). Explanation and generalization-based memory. Proceedings of the Seventh Annual Conference of the Cognitive Society Conference (pp. 323-328). Irvine, CA: Lawrence Erlbaum.
1984
Cullingford, R., & Pazzani, M. (1984). Word-meaning selection in multiprocess language understanding programs. IEEE Transactions on Pattern Analysis and Machine Intelligence 6,4, 493-509. PDF
Pazzani, M. (1984). Conceptual analysis of garden-path sentences. Proceedings of the Tenth International Conference on Computational Linguistics (pp. 486-490). Stanford, CA.
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1983
Pazzani, M. (1983). Interactive script instantiation. Proceedings of the National Conference on Artificial Intelligence (pp. 320-326). Washington DC: Morgan Kaufmann. PDF