


default search action
2nd KDD 1996: Portland, Oregon, USA
- Evangelos Simoudis, Jiawei Han, Usama M. Fayyad:

Proceedings of the Second International Conference on Knowledge Discovery and Data Mining (KDD-96), Portland, Oregon, USA. AAAI Press 1996, ISBN 1-57735-004-9
Regular Papers
Combining Data Mining and Machine Learning
- Philip K. Chan, Salvatore J. Stolfo:

Sharing Learned Models among Remote Database Partitions by Local Meta-Learning. 2-7 - Tom Fawcett, Foster J. Provost:

Combining Data Mining and Machine Learning for Effective User Profiling. 8-13 - Truxton Fulton, Simon Kasif, Steven Salzberg, David L. Waltz:

Local Induction of Decision Trees: Towards Interactive Data Mining. 14-19 - Ivo L. Hofacker, Martijn A. Huynen, Peter F. Stadler, Paul E. Stolorz:

Knowledge Discovery in RNA Sequence Families of HIV Using Scalable Computers. 20-25 - David W. Pfitzner, John K. Salmon:

Parallel Halo Finding in N-Body Cosmology Simulations. 26-31 - Eddie C. Shek, Richard R. Muntz, Edmond Mesrobian, Kenneth W. Ng:

Scalable Exploratory Data Mining of Distributed Geoscientific Data. 32-37
Data Mining Applications
- Victor Ciesielski, Gregory Palstra:

Using a Hybrid Neural/Expert System for Data Base Mining in Market Survey Data. 38-43 - Beatriz de la Iglesia, Justin C. W. Debuse, Victor J. Rayward-Smith:

Discovering Knowledge in Commercial Databases Using Modern Heuristic Techniques. 44-49 - Usama M. Fayyad, David Haussler, Paul E. Stolorz:

KDD for Science Data Analysis: Issues and Examples. 50-56 - Gregory M. Provan, Moninder Singh:

Data Mining and Model Simplicity: A Case Study in Diagnosis. 57-62 - Shusaku Tsumoto, Hiroshi Tanaka:

Automated Discovery of Medical Expert System Rules from Clinical Databases Based on Rough Sets. 63-69 - Jason Tsong-Li Wang, Bruce A. Shapiro, Dennis E. Shasha, Kaizhong Zhang, Chia-Yo Chang:

Automated Discovery of Active Motifs in Multiple RNA Secondary Structures. 70-75 - Rüdiger Wirth, Thomas P. Reinartz:

Detecting Early Indicator Cars in an Automotive Database: A Multi-Strategy Approach. 76-81
Data Mining and Its Applications: A General Overview
- Usama M. Fayyad, Gregory Piatetsky-Shapiro, Padhraic Smyth:

Knowledge Discovery and Data Mining: Towards a Unifying Framework. 82-88 - Gregory Piatetsky-Shapiro, Ronald J. Brachman, Tom Khabaza, Willi Klösgen, Evangelos Simoudis:

An Overview of Issues in Developing Industrial Data Mining and Knowledge Discovery Applications. 89-95
Decision-Tree and Rule Induction
- Pedro M. Domingos:

Linear-Time Rule Induction. 96-101 - A. J. Feelders:

Learning from Biased Data Using Mixture Models. 102-107 - Andreas Ittner, Michael Schlosser:

Discovery of Relevant New Features by Generating Non-Linear Decision Trees. 108-113 - Ron Kohavi, Mehran Sahami:

Error-Based and Entropy-Based Discretization of Continuous Features. 114-119
Learning, Probability, and Graphical Models
- Ron Musick:

Rethinking the Learning of Belief Network Probabilities. 120-125 - Padhraic Smyth:

Clustering Using Monte Carlo Cross-Validation. 126-133 - Paul E. Stolorz, Philip C. Chew:

Harnessing Graphical Structure in Markov Chain Monte Carlo Learning. 134-139
Mining with Noise and Missing Data
- Kamakshi Lakshminarayan, Steven A. Harp, Robert P. Goldman, Tariq Samad:

Imputation of Missing Data Using Machine Learning Techniques. 140-145 - Heikki Mannila, Hannu Toivonen:

Discovering Generalized Episodes Using Minimal Occurrences. 146-151
Pattern-Oriented Data Mining
- Wei-Min Shen, Bing Leng:

Metapattern Generation for Integrated Data Mining. 152-157 - Jan M. Zytkow, Robert Zembowicz:

Automated Pattern Mining with a Scale Dimension. 158-163
Prediction and Deviation
- Andreas Arning, Rakesh Agrawal, Prabhakar Raghavan:

A Linear Method for Deviation Detection in Large Databases. 164-169 - Robert Engels:

Planning Tasks for Knowledge Discovery in Databases; Performing Task-Oriented User-Guidance. 170-175 - Petri Kontkanen, Petri Myllymäki, Henry Tirri:

Predictive Data Mining with Finite Mixtures. 176-182 - Rense Lange:

An Empirical Test of the Weighted Effect Approach to Generalized Prediction Using Recursive Neural Nets. 183-188 - Heikki Mannila, Hannu Toivonen:

Multiple Uses of Frequent Sets and Condensed Representations (Extended Abstract). 189-194 - Brij M. Masand, Gregory Piatetsky-Shapiro:

A Comparison of Approaches for Maximizing Business Payoff of Prediction Models. 195-201
Scalability and Extensibility of Data Mining Systems
- Ron Kohavi:

Scaling Up the Accuracy of Naive-Bayes Classifiers: A Decision-Tree Hybrid. 202-207 - Paul E. Stolorz, Christopher Dean:

Quakefinder: A Scalable Data Mining System for Detecting Earthquakes from Space. 208-213 - Stefan Wrobel, Dietrich Wettschereck, Edgar Sommer, Werner Emde:

Extensibility in Data Mining Systems. 214-219
Spatial, Text and Multimedia Data Mining
- Andrzej Czyzewski:

Mining Knowledge in Noisy Audio Data. 220-225 - Martin Ester, Hans-Peter Kriegel, Jörg Sander, Xiaowei Xu:

A Density-Based Algorithm for Discovering Clusters in Large Spatial Databases with Noise. 226-231 - Kenneth A. Kaufman, Ryszard S. Michalski:

A Method for Reasoning with Structured and Continuous Attributes in the INLEN-2 Multistrategy Knowledge Discovery System. 232-237 - Krista Lagus, Timo Honkela, Samuel Kaski, Teuvo Kohonen:

Self-Organizing Maps of Document Collections: A New Approach to Interactive Exploration. 238-243
Systems for Mining Large Databases
- Rakesh Agrawal, Manish Mehta, John C. Shafer, Ramakrishnan Srikant, Andreas Arning, Toni Bollinger:

The Quest Data Mining System. 244-249 - Jiawei Han, Yongjian Fu, Wei Wang, Jenny Chiang, Wan Gong, Krzysztof Koperski, Deyi Li, Yijun Lu, Amynmohamed Rajan, Nebojsa Stefanovic, Betty Xia, Osmar R. Zaïane:

DBMiner: A System for Mining Knowledge in Large Relational Databases. 250-255 - Tomasz Imielinski, Aashu Virmani, Amin Abdulghani:

DataMine: Application Programming Interface and Query Language for Database Mining. 256-262
KDD-96 Technology Spotlight: Concise Papers
Application of Mathematical Theories
- Micheline Kamber, Rajjan Shinghal:

Evaluating the Interestingness of Characteristic Rules. 263-266 - Alvaro E. Monge, Charles Elkan:

The Field Matching Problem: Algorithms and Applications. 267-270 - Ning Shan, Wojciech Ziarko, Howard J. Hamilton, Nick Cercone:

Discovering Classification Knowledge in Databases Using Rough Sets. 271-274 - Einoshin Suzuki, Masamichi Shimura:

Exceptional Knowledge Discovery in Databases Based on Information Theory. 275-278 - Takao Terano, Yoko Ishino:

Interactive Knowledge Discovery from Marketing Questionnaire Using Simulated Breeding and Inductive Learning Methods. 279-282 - Yang Wang, Andrew K. C. Wong:

Representing Discovered Patterns Using Attributed Hypergraph. 283-286
Data Mining: Integration and Application
- Rakesh Agrawal, Kyuseok Shim:

Developing Tightly-Coupled Data Mining Applications on a Relational Database System. 287-290 - M. Ganesh, Jaideep Srivastava, Travis Richardson:

Mining Entity-Identification Rules for Database Integration. 291-294 - Don R. Swanson, Neil R. Smalheiser:

Undiscovered Public Knowledge: A Ten-Year Update. 295-298
Genetic Algorithms
- Ian W. Flockhart, Nicholas J. Radcliffe:

A Genetic Algorithm-Based Approach to Data Mining. 299-302 - Tae-Wan Ryu, Christoph F. Eick:

Deriving Queries from Results Using Genetic Programming. 303-306
Mining Association Rules
- David Wai-Lok Cheung, Vincent T. Y. Ng, Benjamin W. Tam:

Maintenance of Discovered Knowledge: A Case in Multi-Level Association Rules. 307-310 - Arno J. Knobbe, Pieter W. Adriaans:

Analysing Binary Associations. 311-314
Rule Induction and Decision Tree Induction
- Kevin J. Cherkauer, Jude W. Shavlik:

Growing Simpler Decision Trees to Facilitate Knowledge Discovery. 315-318 - Pedro M. Domingos:

Efficient Specific-to-General Rule Induction. 319-322 - Robert L. Grossman, Haim Bodek, Dave Northcutt, H. Vincent Poor:

Data Mining and Tree-Based Optimization. 323-326 - Pat Langley:

Induction of Condensed Determinations. 327-330 - Ron Rymon:

SE-Trees Outperform Decision Trees in Noisy Domains. 331-334 - Mehran Sahami:

Learning Limited Dependence Bayesian Classifiers. 335-338 - David Urpani, Xindong Wu, Jim Sykes:

RITIO - Rule Induction Two In One. 339-342
Spatial, Temporal, and Multimedia Data Mining
- Ronen Feldman, Haym Hirsh:

Mining Associations in Text in the Presence of Background Knowledge. 343-346 - Edwin M. Knorr, Raymond T. Ng:

Extraction of Spatial Proximity Patterns by Concept Generalization. 347-350 - Balaji Padmanabhan, Alexander Tuzhilin:

Pattern Discovery in Temporal Databases: A Temporal Logic Approach. 351-354
Special Data Mining Techniques
- John M. Aronis, Foster J. Provost, Bruce G. Buchanan:

Exploiting Background Knowledge in Automated Discovery. 355-358 - Gerald Fahner:

Data Mining with Sparse and Simplified Interaction Selection. 359-362 - Thomas Hofmann, Joachim M. Buhmann:

Inferring Hierarchical Clustering Structures by Deterministic Annealing. 363-366 - George H. John, Pat Langley:

Static Versus Dynamic Sampling for Data Mining. 367-370 - Stefan Kramer, Bernhard Pfahringer:

Efficient Search for Strong Partial Determinations. 371-374 - Stephen McKearney, Huw Roberts:

Reverse Engineering Databases for Knowledge Discovery. 375-378 - Marco Richeldi, Pier Luca Lanzi:

Performing Effective Feature Selection by Investigating the Deep Structure of the Data. 379-383
Invited Papers
- Georges G. Grinstein:

Harnessing the Human in Knowledge Discovery. 384-385 - Jeffrey D. Ullman:

Efficient Implementation of Data Cubes Via Materialized Views. 386-388

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














