15. ECML 2004:
Pisa,
Italy
Jean-François Boulicaut, Floriana Esposito, Fosca Giannotti, Dino Pedreschi (Eds.):
Machine Learning: ECML 2004, 15th European Conference on Machine Learning, Pisa, Italy, September 20-24, 2004, Proceedings.
Lecture Notes in Computer Science 3201 Springer 2004, ISBN 3-540-23105-6
Invited Papers
Contributed Papers
- Douglas Aberdeen:
Filtered Reinforcement Learning.
27-38
- Rehan Akbani, Stephen Kwek, Nathalie Japkowicz:
Applying Support Vector Machines to Imbalanced Datasets.
39-50
- Isabelle Alvarez:
Sensitivity Analysis of the Result in Binary Decision Trees.
51-62
- Peter Auer, Ronald Ortner:
A Boosting Approach to Multiple Instance Learning.
63-74
- Avi Bab, Ronen I. Brafman:
An Experimental Study of Different Approaches to Reinforcement Learning in Common Interest Stochastic Games.
75-86
- Steffen Bickel, Tobias Scheffer:
Learning from Message Pairs for Automatic Email Answering.
87-98
- Nicola Fanizzi, Luigi Iannone, Ignazio Palmisano, Giovanni Semeraro:
Concept Formation in Expressive Description Logics.
99-110
- Aidan Finn, Nicholas Kushmerick:
Multi-level Boundary Classification for Information Extraction.
111-122
- Johannes Fürnkranz, Peter A. Flach:
An Analysis of Stopping and Filtering Criteria for Rule Learning.
123-133
- Matteo Gagliolo, Viktor Zhumatiy, Jürgen Schmidhuber:
Adaptive Online Time Allocation to Search Algorithms.
134-143
- Bernhard Hengst:
Model Approximation for HEXQ Hierarchical Reinforcement Learning.
144-155
- Andreas Heß, Nicholas Kushmerick:
Iterative Ensemble Classification for Relational Data: A Case Study of Semantic Web Services.
156-167
- Pieter Jan't Hoen, Karl Tuyls:
Analyzing Multi-agent Reinforcement Learning Using Evolutionary Dynamics.
168-179
- Tobias Jung, Thomas Uthmann:
Experiments in Value Function Approximation with Sparse Support Vector Regression.
180-191
- Mohammed Waleed Kadous, Claude Sammut:
Constructive Induction for Classifying Time Series.
192-204
- Kristian Kersting, Thomas Gärtner:
Fisher Kernels for Logical Sequences.
205-216
- Bryan Klimt, Yiming Yang:
The Enron Corpus: A New Dataset for Email Classification Research.
217-226
- András Kocsor, Kornél Kovács, Csaba Szepesvári:
Margin Maximizing Discriminant Analysis.
227-238
- Mark Last:
Multi-objective Classification with Info-Fuzzy Networks.
239-249
- Rui Leite, Pavel Brazdil:
Improving Progressive Sampling via Meta-learning on Learning Curves.
250-261
- Tony Lindgren:
Methods for Rule Conflict Resolution.
262-273
- Han Liu, Xiaobin Yuan, Qianying Tang, Rafal Kustra:
An Efficient Method to Estimate Labelled Sample Size for Transductive LDA(QDA/MDA) Based on Bayes Risk.
274-285
- Oscar Luaces, Gustavo F. Bayón, José Ramón Quevedo, Jorge Díez, Juan José del Coz, Antonio Bahamonde:
Analyzing Sensory Data Using Non-linear Preference Learning with Feature Subset Selection.
286-297
- Jangmin O, Jae Won Lee, Jongwoo Lee, Byoung-Tak Zhang:
Dynamic Asset Allocation Exploiting Predictors in Reinforcement Learning Framework.
298-309
- Santiago Ontañón, Enric Plaza:
Justification-Based Selection of Training Examples for Case Base Reduction.
310-321
- Satoshi Oyama, Christopher D. Manning:
Using Feature Conjunctions Across Examples for Learning Pairwise Classifiers.
322-333
- Predrag Radivojac, Zoran Obradovic, A. Keith Dunker, Slobodan Vucetic:
Feature Selection Filters Based on the Permutation Test.
334-346
- Bohdana Ratitch, Doina Precup:
Sparse Distributed Memories for On-Line Value-Based Reinforcement Learning.
347-358
- Marko Robnik-Sikonja:
Improving Random Forests.
359-370
- Marco Saerens, François Fouss, Luh Yen, Pierre Dupont:
The Principal Components Analysis of a Graph, and Its Relationships to Spectral Clustering.
371-383
- Craig Saunders, David R. Hardoon, John Shawe-Taylor, Gerhard Widmer:
Using String Kernels to Identify Famous Performers from Their Playing Style.
384-395
- Janne Sinkkonen, Janne Nikkilä, Leo Lahti, Samuel Kaski:
Associative Clustering.
396-406
- Dorian Suc, Ivan Bratko, Claude Sammut:
Learning to Fly Simple and Robust.
407-418
- Shiliang Sun, Changshui Zhang, Guoqiang Yu, Naijiang Lu, Fei Xiao:
Bayesian Network Methods for Traffic Flow Forecasting with Incomplete Data.
419-428
- Kai Ming Ting:
Matching Model Versus Single Model: A Study of the Requirement to Match Class Distribution Using Decision Trees.
429-440
- Ljupco Todorovski, Peter Ljubic, Saso Dzeroski:
Inducing Polynomial Equations for Regression.
441-452
- Ivor W. Tsang, James T. Kwok:
Efficient Hyperkernel Learning Using Second-Order Cone Programming.
453-464
- Grigorios Tsoumakas, Ioannis Katakis, Ioannis P. Vlahavas:
Effective Voting of Heterogeneous Classifiers.
465-476
- Marco Wiering:
Convergence and Divergence in Standard and Averaging Reinforcement Learning.
477-488
- Xiaoyun Wu, Rohini K. Srihari, Zhaohui Zheng:
Document Representation for One-Class SVM.
489-500
- Harry Zhang, Jiang Su:
Naive Bayesian Classifiers for Ranking.
501-512
- Harry Zhang, Jiang Su:
Conditional Independence Trees.
513-524
- Zhi-Hua Zhou, Ke-Jia Chen, Yuan Jiang:
Exploiting Unlabeled Data in Content-Based Image Retrieval.
525-536
- Kenny Qili Zhu, Ziwei Liu:
Population Diversity in Permutation-Based Genetic Algorithm.
537-547
- Jacobus van Zyl, Ian Cloete:
Simultaneous Concept Learning of Fuzzy Rules.
548-559
Posters
Copyright © Mon Nov 2 20:31:56 2009
by Michael Ley (ley@uni-trier.de)