Conference schedule   

This schedule is final.

Last update: 01-10-2007

Detailed schedules of workshops and tutorials are avaliable in "Worskhops" and "Tutorials" sections, respectively.

Schedules at a glance (new window):

Discovery Challenge, Tutorials and Workshops on Monday, September 17

Main Conferences, Tuesday, Wednesday, Thursday, September 18-20

Tutorials and Workshops on Friday, September 21


Sunday, 16  |  Monday, 17  |   Tuesday, 18  |  Wednesday, 19  |   Thursday, 20  |  Friday, 21


        Sunday, September 16th

16:00-19:00  
Pre-conference registration desk.
Participants registering on that day will have the opportunity to join guided walk around the campus and neighbouring historic part of the city (Old Town).


        Monday, September 17th

9:00-17:20  
Workshops and Tutorials

* Discovery Challenge, sponsored by Gemius

        Workshops:

* Data Mining in Functional Genomics and Proteomics: Current Trends
   and Future Directions

* Knowledge Discovery from Ubiquitous Data Streams
* Planning to Learn
* Multi-Relational Data Mining
* Graph Labelling Workshop and Web Spam Challenge
* Approaches and Applications of Inductive Programming

* Mining Complex Data - Two-day event, extends to Friday 21st

        Tutorials:

* State-of-the-Art in Data Stream Mining
* Exploring the Power of Links in Data Mining
* The Challenges of the Semantic Web to Machine Learning and Data Mining
* Discovering and Tracking User Communities

17:30 -         
Auditorium - Conference Opening Ceremony

19:00 -         
Welcome Reception in Porczyński Gallery


        Tuesday, September 18th

9:00-10:00  
Auditorium - Invited talk:  Tom M. Mitchell, sponsored by PASCAL
Title: Learning, Information Extraction and the Web
Session Chair: Dunja Mladenic

10:00-10:40  
Auditorium - Award Session - ECML Best Paper presentation, sponsored by KDubiq
Session Chair: Stan Matwin

298 - Probabilistic Explanation Based Learning
        by Angelika Kimmig, Luc De Raedt, Hannu Toivonen


        Parallel sessions:

11:10-12:25  
S1: Ensemble Methods - Auditorium
Session Chair: Joao Gama

315 - Random k-Labelsets: An Ensemble Method for Multilabel Classification,
        by Grigorios Tsoumakas, Ioannis Vlahavas
329 - Seeing the Forest through the Trees: Learning a Comprehensible
        Model from an Ensemble,
        by Anneleen Van Assche, Hendrik Blockeel
541 - Constraint Selection by Committee: An Ensemble Approach to Identifying
        Informative Constraints for Semi-Supervised Clustering,
        by Derek Greene, Pádraig Cunningham

S2: Structure Learning - Room 111-112-113
Session Chair: Zbigniew W. Ras

247 - Learning Similarity between Tree Structured Data: Application
        to Image Recognition,
        by Laurent Boyer, Amaury Habrard, Marc Sebban
283 - Structure Learning of Probabilistic Relational Models from Incomplete
        Relational Data,
        by Xiao-Lin Li, Zhi-Hua Zhou
365 - Efficient Computation of Recursive Principal Component Analysis
        for Structured Input,
        by Alessandro Sperduti

S3: Nearest Neighbor Methods - Room 114-115-116
Session Chair: Igor Kononenko

 11 - IKNN: Informative K-Nearest Neighbor Pattern Classification,
        by Yang Song, Jian Huang, Ding Zhou, Hongyuan Zha, C. Lee Giles
173 - A Comparison of Two Approaches to Classify with Guaranteed Performance,
        by Stijn Vanderlooy, Ida G. Sprinkhuizen-Kuyper
524 - An Empirical Comparison of Exact Nearest Neighbour Algorithms,
        by Ashraf Kibriya, Eibe Frank

12:30-14:00  
Lunch break

14:00-15:40  
S4: Markov Models - Auditorium
Session Chair: Luc De Raedt

217 - Efficient Weight Learning for Markov Logic Networks,
        by Daniel Lowd, Pedro Domingos
218 - Separating Precision and Mean in Dirichlet-enhanced High-order
        Markov Models,
        by Rikiya Takahashi
392 - Discriminative Sequence Labeling by Z-score Optimization,
        by Elisa Ricci, Tijl de Bie, Nello Cristianini
  51 - Learning Partially Observable Markov Models from First Passage Times,
        by Jérôme Callut, Pierre Dupont

S5: Clustering - Room 111-112-113
Session Chair: Eibe Frank

279 - Context-specific Independence Mixture Modelling for Protein Families,
        by Benjamin Georgi, Jörg Schultz, Alexander Schliep
412 - Clustering Trees with Instance Level Constraints,
        by Jan Struyf, Sašo Džeroski
 49 - A Prediction-based Visual Approach for Cluster Exploration
        and Cluster Validation by HOV3,
        by Ke-Bing Zhang, Mehmet A. Orgun, Kang Zhang
517 - Spectral Clustering and Embedding with Hidden Markov Models,
        by Tony Jebara, Yingbo Song, Kapil Thadani

S6: Unlabeled Data/Active Learning - Room 114-115-116
Session Chair: Abolfazl Fazel Famili

157 - Learning Balls of Strings with Correction Queries,
        by Leonor Becerra Bonache, Colin de la Higuera, Jean-Christophe Janodet,
        Frédéric Tantini
203 - Analyzing Co-Training Style Algorithms,
        by Wei Wang, Zhi-Hua Zhou
509 - Dual Strategy Active Learning,
        by Pinar Donmez, Jaime G. Carbonell, Paul N. Bennett
481 - Finding Transport Proteins in a General Protein Database,
        by Sanmay Das, Milton H. Saier, Charles Elkan

16:10-18:30  
Plenary Session - ECML poster highlights - Auditorium
Session Chairs: Stan Matwin and Dunja Mladenic

Poster session schedule

19:00-22:00  
ECML Poster reception at Staszic Palace


        Wednesday, September 19th

9:00-10:00  
Auditorium - Invited talk:  Ricardo Baeza-Yates, sponsored by PASCAL
Title: Mining Queries
Session Chair: Stan Matwin

10:00-11:00  
Auditorium - Award Session - ECML/PKDD Best Student Papers, sponsored by Machine Learning
Session Chair: Joost N. Kok and Dunja Mladenic

527 - Additive Groves of Regression Trees
        by Daria Sorokina, Rich Caruana, Mirek Riedewald
531 - Bridged Refinement for Transfer Learning
        by Dikan Xing, Wenyuan Dai, Gui-Rong Xue, Yong Yu


        Parallel sessions:

11:20-12:35  
S7: Data Mining - Auditorium
Session Chair: Hendrik Blockeel

131 - Approximating Gaussian Processes with H2-matrices,
        by Steffen Börm, Jochen Garcke
 16 - Learning to Detect Adverse Traffic Events from Noisily Labeled Data,
        by Tomáš Šingliar, Miloš Hauskrecht
255 - Feature Extraction from Sensor Data Streams for Real-Time Human Behaviour
        Recognition,
        by Julia Hunter, Martin Colley

S8: Labeled Data - Room 111-112-113
Session Chair: Rayid Ghani

154 - Level Learning Set: A Novel Classifier Based on Active Contour Models,
        by Xiongcai Cai, Arcot Sowmya
164 - Avoiding Boosting Overfitting by Removing ''Confusing Samples'',
        by Alexander Vezhnevets, Olga Barinova

S9: Statistical Models - Room 114-115-116
Session Chair: Szymon Jaroszewicz

109 - Finding the Right Family: Parent and Child Selection for Averaged
        One-Dependence Estimators,
        by Fei Zheng, Geoff Webb
114 - Source Separation with Gaussian Process Models,
        by Sunho Park, Seungjin Choi
275 - Bayesian Inference for Sparse Generalized Linear Models,
        by Matthias Seeger, Sebastian Gerwinn, Matthias Bethge

12:30-14:00  
Lunch break

14:00-15:15  
S10: Data Mining/Social Networks - Auditorium
Session Chair: Filip Železný

444 - Privacy Preserving Market Basket Data Analysis,
        by Ling Guo, Songtao Guo, Xintao Wu
539 - Towards data mining without information on knowledge structure,
        by Alexandre Vautier, Marie-Odile Cordier, René Quiniou
116 - Generating Social Network Features for Link-based Classification,
        by Jun Karamon, Yutaka Matsuo, Hikaru Yamamoto, Mitsuru Ishizuka

S11: Labeled Data - Room 111-112-113
Session Chair: Mieczyslaw A. Klopotek

206 - The Cost of Learning Directed Cuts,
        by Thomas Gärtner, Gemma C. Garriga
287 - Classification of anti-learnable biological and synthetic data,
        by Adam Kowalczyk
396 - Relaxation Labeling for Selecting and Exploiting Efficiently Non-Local
        Dependencies in Sequence Labeling,
        by Guillaume Wisniewski, Patrick Gallinari

S12: Statistical Models/Reinforcement Learning - Room 114-115-116
Session Chair: Toon Calders

348 - Statistical Model for Rough Set Approach to Multicriteria Classification,
        by Wojciech Kotłowski, Krzysztof Dembczyński, Salvatore Greco,
        Roman Słowiński
505 - Statistical Debugging using Latent Topic Models,
        by David Andrzejewski, Anne Mulhern, Ben Liblit, Xiaojin Zhu
331 - Policy Gradient Critics,
        by Daan Wierstra, Jürgen Schmidhuber

15:45-17:00  
S13: Social Networks/Bayesian Networks - Auditorium
Session Chair: Hillol Kargupta

403 - An Algorithm to Find Overlapping Community Structure in Networks,
        by Steve Gregory
231 - Bayesian Substructure Learning - Approximate Learning of Very Large
        Network Structures,
        by Andreas Nägele, Mathäus Dejori, Martin Stetter
374 -  Shrinkage Estimator for Bayesian Network Parameters,
        by John Burge, Terran Lane

S14: Labeled Data/AUC - Room 111-112-113
Session Chair: Zhi-Hua Zhou

570 - On Pairwise Naive Bayes Classifiers,
        by Jan-Nikolas Sulzmann, Johannes Fürnkranz, Eyke Hüllermeier
177 - Hinge Rank Loss and the Area under the ROC Curve,
        by Harald Steck
291 - Finding Outlying Items in Sets of Partial Rankings,
        by Antti Ukkonen, Heikki Mannila

S15: Reinforcement Learning - Room 114-115-116
Session Chair: Alessandro Sperduti

407 - Planning and Learning in Environments with Delayed Feedback,
        by Thomas J. Walsh, Ali Nouri, Lihong Li, Michael L. Littman
 84 - Safe Q-Learning on Complete History Spaces,
        by Stephan Timmer, Martin Riedmiller
445 - Graph-Based Domain Mapping for Transfer Learning in General Games,
        by Gregory Kuhlmann, Peter Stone

11:20-17:00  
Industrial track - Room 211-212-213

17:10-19:00  
Auditorium - Community meeting

19:30 -         
Conference Banquet at Zachęta National Gallery


        Thursday, September 20th

9:00-10:00  
Auditorium - Invited talk:  Peter Flach, sponsored by PASCAL
Title: Putting Things in Order: On the Fundamental Role of Ranking in Classification and Probability Estimation
Session Chair: Joost N. Kok

10:00-10:40  
Auditorium - Award Session - PKDD Best Paper presentation, sponsored by KDubiq
Session Chair: Andrzej Skowron

133 - Efficient AUC Optimization for Classification
        by Toon Calders, Szymon Jaroszewicz


        Parallel sessions:


11:10-12:25  
S16: Text Mining - Auditorium
Session Chair: Myra Spiliopoulou

166 - Classification of Web Documents Using a Graph-Based Model
        and Structural Patterns,
        by Andrzej Dominik, Zbigniew Walczak, Jacek Wojciechowski
226 - Learning to Classify Documents with Only a Small Positive Training Set,
        by Xiao-Li Li, Bing Liu, See-Kiong Ng
341 - Using the Web to Reduce Data Sparseness in Pattern-based Information
        Extraction,
        by Sebastian Blohm, Philipp Cimiano

S17: Dimensionality Reduction - Room 111-112-113
Session Chair: Adam Kowalczyk

126 - Fast Optimization for L1 Regularization: Evaluation and Two New Approaches,
        by Mark Schmidt, Glenn M. Fung, Romer Rosales
361 - A Graphical Model for Content Based Image Suggestion and Feature Selection,
        by Sabri Boutemedjet, Djemel Ziou, Nizar Bouguila
440 - Stability based Sparse LSI/PCA: Incorporating Feature Selection
        in LSI and PCA,
        by Dimitrios Mavroeidis, Michalis Vazirgiannis

S18: Model Selection - Room 114-115-11
Session Chair: Roman Słowiński

261 - An Improved Model Selection Heuristic for AUC,
        by Shaomin Wu, Peter Flach, Cèsar Ferri
316 - Improved Algorithms for Univariate Discretization of Continuous Features,
        by Jussi Kujala, Tapio Elomaa
330 - Experiment Databases: Towards an Improved Experimental Methodology
        in Machine Learning,
        by Hendrik Blockeel, Joaquin Vanschoren

12:30-14:00  
Lunch break

14:00-15:15  
S19: Text Mining/Unlabeled Data - Auditorium
Session Chair: Xiaoli Li

372 - Site-Independent Template-Block Detection,
        by Aleksander Kolcz, Wen-tau Yih
589 - Context Sensitive Paraphrasing with a Single Unsupervised Classifier,
        by Michael Connor, Dan Roth
518 - Domain Adaptation of Conditional Probability Models via Feature Subsetting,
        by Sandeepkumar Satpal, Sunita Sarawagi

S20: Dimensionality Reduction/Reinforcement Learning - Room 111-112-113
Session Chair: Shusaku Tsumoto

483 - Classification in Very High Dimensional Problems with Handfuls of Examples,
        by Mark M. Palatucci, Tom M. Mitchell
 62 - Speeding up Feature Subset Selection through Mutual Information Relevance
        Filtering,
        by Gert Van Dijck, Marc M. Van Hulle
469 - Efficient Continuous-Time Reinforcement Learning with Adaptive State Graphs,
        by Gerhard Neumann, Michael Pfeiffer, Wolfgang Maass

S21: Model Selection/Active Learning - Room 114-115-116
Session Chair: Tony Jebara

496 - Classifier Loss under Metric Uncertainty,
        by David Skalak, Alexandru Niculescu-Mizil, Rich Caruana
523 - Neighborhood-Based Local Sensitivity,
        by Paul N. Bennett
191 - Decision Tree Instability and Active Learning,
        by Kenneth Dwyer, Robert Holte

15:45-18:30  
Plenary Session - PKDD poster highlights and EU projects presentation - Auditorium
Session Chairs: Joost N. Kok and Andrzej Skowron

Poster session schedule

19:00-22:00  
PKDD Poster and EU Projects reception at Staszic Palace, sponsored by KDubiq


        Friday, September 21st

9:00-10:00  
Auditorium - Invited talk:  Barry Smyth, sponsored by PASCAL
Title: Adventures in Personalized Information Access
Session Chair: Andrzej Skowron

10:30-17:30  
Workshops and Tutorials

        Workshops:

* Prior Conceptual Knowledge in Machine Learning and Knowledge Discovery
* Web Mining 2.0
* International Workshop on Constraint-Based Mining and Learning
* Rough Sets in Knowledge Discovery: Foundations and Applications
* Mining Complex Data -
Two day event, starts on Monday 17th

        Tutorials:

* Mining Large Graphs: Laws and tools
* Knowledge Discovery Standards in Ubiquitous Environments
* An introduction to Statistical Relational Learning