16. ECML 2005:
Porto,
Portugal
João Gama, Rui Camacho, Pavel Brazdil, Alípio Jorge, Luís Torgo (Eds.):
Machine Learning: ECML 2005, 16th European Conference on Machine Learning, Porto, Portugal, October 3-7, 2005, Proceedings.
Lecture Notes in Computer Science 3720 Springer 2005, ISBN 3-540-29243-8
Invited Talks
(shared with PKDD 2005)
- Michael R. Berthold:
Data Analysis in the Life Sciences - Sparking Ideas -.
1
- Claire Cardie:
Machine Learning for Natural Language Processing (and Vice Versa?).
2
- Luc De Raedt:
Statistical Relational Learning: An Inductive Logic Programming Perspective.
3-5
- Eamonn J. Keogh:
Recent Advances in Mining Time Series Data.
6
- Ron Kohavi:
Focus the Mining Beacon: Lessons and Challenges from the World of E-Commerce.
7
- Yossi Matias:
Data Streams and Data Synopses for Massive Data Sets.
8-9
Long Papers
- Liviu Badea:
Clustering and Metaclustering with Nonnegative Matrix Decompositions.
10-22
- Christian Bessière, Remi Coletta, Frédéric Koriche, Barry O'Sullivan:
A SAT-Based Version Space Algorithm for Acquiring Constraint Satisfaction Problems.
23-34
- Steffen Bickel, Tobias Scheffer:
Estimation of Mixture Models Using Co-EM.
35-46
- Matthew Brand:
Nonrigid Embeddings for Dimensionality Reduction.
47-59
- Ulf Brefeld, Christoph Büscher, Tobias Scheffer:
Multi-view Discriminative Sequential Learning.
60-71
- Jesús Cerquides, Ramon López de Mántaras:
Robust Bayesian Linear Classifier Ensembles.
72-83
- Jesse Davis, Elizabeth S. Burnside, Inês de Castro Dutra, David Page, Vítor Santos Costa:
An Integrated Approach to Learning Bayesian Networks of Rules.
84-95
- Isabel Drost, Tobias Scheffer:
Thwarting the Nigritude Ultramarine: Learning to Identify Link Spam.
96-107
- Arkady Epshteyn, Gerald DeJong:
Rotational Prior Knowledge for SVMs.
108-119
- Stefano Ferilli, Teresa Maria Altomare Basile, Nicola Di Mauro, Floriana Esposito:
On the LearnAbility of Abstraction Theories from Observations for Relational Learning.
120-132
- George Forman, Ira Cohen:
Beware the Null Hypothesis: Critical Value Tables for Evaluating Classifiers.
133-145
- Vincent Guigue, Alain Rakotomamonjy, Stéphane Canu:
Kernel Basis Pursuit.
146-157
- Iris Hendrickx, Antal van den Bosch:
Hybrid Algorithms with Instance-Based Classification.
158-169
- Aloak Kapoor, Russell Greiner:
Learning and Classifying Under Hard Budgets.
170-181
- Wolf Kienzle, Bernhard Schölkopf:
Training Support Vector Machines with Multiple Equality Constraints.
182-193
- Hans van Kuilenburg, Marco Wiering, Marten den Uyl:
A Model Based Method for Automatic Facial Expression Recognition.
194-205
- François Laviolette, Mario Marchand, Mohak Shah:
Margin-Sparsity Trade-Off for the Set Covering Machine.
206-217
- Xiaoli Li, Bing Liu:
Learning from Positive and Unlabeled Examples with Different Data Distributions.
218-229
- Shiau Hong Lim, Gerald DeJong:
Towards Finite-Sample Convergence of Direct Reinforcement Learning.
230-241
- Hsuan-Tien Lin, Ling Li:
Infinite Ensemble Learning with Support Vector Machines.
242-254
- Siwei Lyu:
A Kernel Between Unordered Sets of Data: The Gaussian Mixture Approach.
255-267
- Prem Melville, Stewart M. Yang, Maytal Saar-Tsechansky, Raymond J. Mooney:
Active Learning for Probability Estimation Using Jensen-Shannon Divergence.
268-279
- Jan Peters, Sethu Vijayakumar, Stefan Schaal:
Natural Actor-Critic.
280-291
- Detlef Prescher:
Inducing Head-Driven PCFGs with Latent Heads: Refining a Tree-Bank Grammar for Parsing.
292-304
- Stefan Raeymaekers, Maurice Bruynooghe, Jan Van den Bussche:
Learning (k, l)-Contextual Tree Languages for Information Extraction.
305-316
- Martin Riedmiller:
Neural Fitted Q Iteration - First Experiences with a Data Efficient Neural Reinforcement Learning Method.
317-328
- Carsten Riggelsen:
MCMC Learning of Bayesian Network Models by Markov Blanket Decomposition.
329-340
- Jarkko Salojärvi, Kai Puolamäki, Samuel Kaski:
On Discriminative Joint Density Modeling.
341-352
- Guy Shani, Ronen I. Brafman, Solomon Eyal Shimony:
Model-Based Online Learning of POMDPs.
353-364
- Shengli Sheng, Charles X. Ling, Qiang Yang:
Simple Test Strategies for Cost-Sensitive Decision Trees.
365-376
- JaeMo Sung, Sung Yang Bang, Seungjin Choi, Zoubin Ghahramani:
U-Likelihood and U-Updating Algorithms: Statistical Inference in Latent Variable Models.
377-388
- Daniel Szer, François Charpillet:
An Optimal Best-First Search Algorithm for Solving Infinite Horizon DEC-POMDPs.
389-399
- Kari Torkkola, Eugene Tuv:
Ensemble Learning with Supervised Kernels.
400-411
- Lisa Torrey, Trevor Walker, Jude W. Shavlik, Richard Maclin:
Using Advice to Transfer Knowledge Acquired in One Reinforcement Learning Task to Another.
412-424
- Ronan Trepos, Ansaf Salleb, Marie-Odile Cordier, Véronique Masson, Chantal Gascuel:
A Distance-Based Approach for Action Recommendation.
425-436
- Joannès Vermorel, Mehryar Mohri:
Multi-armed Bandit Algorithms and Empirical Evaluation.
437-448
- Gang Wang, Zhihua Zhang, Frederick H. Lochovsky:
Annealed Discriminant Analysis.
449-460
- Shijun Wang, Changshui Zhang:
Network Game and Boosting.
461-472
- Olcay Taner Yildiz, Ethem Alpaydin:
Model Selection in Omnivariate Decision Trees.
473-484
- Marie desJardins, Priyang Rathod, Lise Getoor:
Bayesian Network Learning with Abstraction Hierarchies and Context-Specific Independence.
485-496
Short Papers
- Steffen Bickel, Peter Haider, Tobias Scheffer:
Learning to Complete Sentences.
497-504
- Antoine Bordes, Léon Bottou:
The Huller: A Simple and Efficient Online SVM.
505-512
- Jérôme Callut, Pierre Dupont:
Inducing Hidden Markov Models to Model Long-Term Dependencies.
513-521
- François Coste, Goulven Kerbellec:
A Similar Fragments Merging Approach to Learn Automata on Proteins.
522-529
- Chris H. Q. Ding, Xiaofeng He, Horst D. Simon:
Nonnegative Lagrangian Relaxation of K-Means and Spectral Clustering.
530-538
- Chris Drummond, Robert C. Holte:
Severe Class Imbalance: Why Better Algorithms Aren't the Answer.
539-546
- Tapio Elomaa, Jussi Kujala, Juho Rousu:
Approximation Algorithms for Minimizing Empirical Error by Axis-Parallel Hyperplanes.
547-555
- Daan Fierens, Jan Ramon, Hendrik Blockeel, Maurice Bruynooghe:
A Comparison of Approaches for Learning Probability Trees.
556-563
- George Forman:
Counting Positives Accurately Despite Inaccurate Classification.
564-575
- Ramunas Girdziusas, Jorma Laaksonen:
Optimal Stopping and Constraints for Diffusion Models of Signals with Discontinuities.
576-583
- Ali Hamzeh, Adel Rahmani:
An Evolutionary Function Approximation Approach to Compute Prediction in XCSF.
584-592
- Masoumeh T. Izadi, Doina Precup:
Using Rewards for Belief State Updates in Partially Observable Markov Decision Processes.
593-600
- Robin Jaulmes, Joelle Pineau, Doina Precup:
Active Learning in Partially Observable Markov Decision Processes.
601-608
- Sergio Jiménez, Fernando Fernández, Daniel Borrajo:
Machine Learning of Plan Robustness Knowledge About Instances.
609-616
- Arnaud Lallouet, Andrei Legtchenko:
Two Contributions of Constraint Programming to Machine Learning.
617-624
- Tao Li, Wei Peng:
A Clustering Model Based on Matrix Approximation with Applications to Cluster System Log Files.
625-632
- Fletcher Lu, J. Efrim Boritz:
Detecting Fraud in Health Insurance Data: Learning to Model Incomplete Benford's Law Distributions.
633-640
- Ingo Mierswa, Michael Wurst:
Efficient Case Based Feature Construction.
641-648
- Richard Nock, Frank Nielsen:
Fitting the Smallest Enclosing Bregman Ball.
649-656
- Daniel Oblinger, Vittorio Castelli, Tessa A. Lau, Lawrence D. Bergman:
Similarity-Based Alignment and Generalization.
657-664
- Oleg Okun, Helen Priisalu, Alexessander Alves:
Fast Non-negative Dimensionality Reduction for Protein Fold Recognition.
665-672
- Irene M. Ong, Inês de Castro Dutra, David Page, Vítor Santos Costa:
Mode Directed Path Finding.
673-681
- Xuan Hieu Phan, Minh Le Nguyen, Susumu Horiguchi, Tu Bao Ho, Yasushi Inoguchi:
Classification with Maximum Entropy Modeling of Predictive Association Rules.
682-689
- Joaquim F. Pinto da Costa, Jaime S. Cardoso:
Classification of Ordinal Data Using Neural Networks.
690-697
- Barnabás Póczos, Bálint Takács, András Lörincz:
Independent Subspace Analysis on Innovations.
698-706
- Ricardo Rocha, Nuno A. Fonseca, Vítor Santos Costa:
On Applying Tabling to Inductive Logic Programming.
707-714
- *** paper retracted by the authors *** [Learning Models of Relational Stochastic Processes].
715-723
- Surendra K. Singhi, Huan Liu:
Error-Sensitive Grading for Model Combination.
724-732
- Hendrik Skubch, Michael Thielscher:
Strategy Learning for Reasoning Agents.
733-740
- Yuk Lai Suen, Prem Melville, Raymond J. Mooney:
Combining Bias and Variance Reduction Techniques for Regression Trees.
741-749
- Petroula Tsampouka, John Shawe-Taylor:
Analysis of Generic Perceptron-Like Large Margin Classifiers.
750-758
- Fang Wang, Yuhui Qiu:
Multimodal Function Optimizing by a New Hybrid Nonlinear Simplex Search and Particle Swarm Algorithm.
759-766
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