Presentations
Slides and posters
- John M. Agosta, Thomas R. Gardos and Marek J. Druzdzel. Query-Based Diagnostics. Pages 1--8. Poster.
- Sourour Ammar, Philippe Leray, Boris Defourny and Louis Wehenkel. High-Dimensional Probability Density Estimation with Randomized Ensembles of Tree Structured Bayesian Networks. Pages 9--16.
- Alessandro Antonucci, Marco Zaffalon, Yi Sun and Cassio P. de Campos. Generalized Loopy 2U: A New Algorithm for Approximate Inference in Credal Networks. Pages 17--24. Slides.
- Manuel Arias and Francisco J. Diez. Carmen: An Open Source Project for Probabilistic Graphical Models. Pages 25--32. Poster.
- Janneke H. Bolt. Bayesian Networks: the Parental Synergy. Pages 33--40. Slides.
- A. Cano, M. Gomez-Olmedo and S. Moral. A Score Based Ranking of the Edges for the PC Algorithm. Pages 41--48.
- Andres Cano, Andres Masegosa and Serafin Moral. A Bayesian Approach to Estimate Probabilities in Classification Trees. Pages 49--56. Poster.
- Tao Chen, Nevin L. Zhang and Yi Wang. Efficient Model Evaluation in the Search-Based Approach to Latent Structure Discovery. Pages 57--64. Slides.
- Barry R. Cobb. Measuring Efficiency in Influence Diagram Models. Pages 65--72. Poster.
- Jorge Cordero H. and Yifeng Zeng. Attribute Clustering Based on Heuristic Tree Partition. Pages 73--80. Poster.
- Sergio Rodrigues de Morais and Alex Aussem. A Novel Scalable and Correct Markov Boundary Learning Algorithm Under Faithfulness Condition. Pages 81--88.
- Peter R. de Waal. Marginals of DAG-Isomorphic Independence Models. Pages 89--96. Poster.
- Francisco Elizalde, L. Enrique Sucar, Manuel Luque, Francisco Javier Diez and Alberto Reyes. Policy Explanation in Factored Markov Decision Processes. Pages 97--104. Slides.
- Antonio Fernandez, Jens D. Nielsen and Antonio Salmeron. Learning Naive Bayes Regression Models from Missing Data Using Mixtures of Truncated Exponentials. Pages 105--112. Slides.
- Ildiko Flesch and Peter J. F. Lucas. The Probabilistic Interpretation of Model-Based Diagnosis. Pages 113--120. Poster.
- Olivier C. H. Francois. Efficient Bayesian Network Learning Using EM or Pairwise Deletion. Pages 121--128.
- Jose A. Gamez, Juan L. Mateo, Thomas D. Nielsen and Jose M. Puerta. Robust Classification Using Mixtures of Dependency Networks. Pages 129--136. Slides.
- Jose A. Gamez, Juan L. Mateo and Jose M. Puerta. Towards Consistency in General Dependency Networks. Pages 137--144. Poster.
- Miguel A. Gomez-Villegas, Paloma Main and Rosario Susi. Sensitivity of Gaussian Bayesian Networks to Inaccuracies in Their Parameters. Pages 145--152. Poster.
- Finn Verner Jensen. Approximate Representation of Optimal Strategies from Influence Diagrams. Pages 153--159. Slides.
- Johan Kwisthout. Complexity Results for Enumerating MPE and Partial MAP. Pages 161--168. Poster.
- Helge Langseth, Thomas D. Nielsen, Rafael Rumi and Antonio Salmeron. Parameter Estimation in Mixtures of Truncated Exponentials. Pages 169--176. Slides.
- Manuel Luque, Thomas D. Nielsen and Finn V. Jensen. An Anytime Algorithm for Evaluating Unconstrained Influence Diagrams. Pages 177--184. Poster.
- Paul P. Maaskant and Marek J. Druzdzel. An Independence of Causal Interactions Model for Opposing Influences. Pages 185--192. Poster.
- Anders L. Madsen. New Methods for Marginalization in Lazy Propagation. Pages 193--200. Slides.
- Anders L. Madsen. Solving CLQG Influence Diagrams Using Arc-Reversal Operations in a Strong Junction Tree. Pages 201--208. Poster.
- Tommi Mononen and Petri Myllymaki. Computing the Multinomial Stochastic Complexity in Sub-Linear Time. Pages 209--216.
- Jens D. Nielsen, Rafael Rumi and Antonio Salmeron. Structural-EM for Learning PDG Models from Incomplete Data. Pages 217--224.
- Mathias Niepert and Dirk Van Gucht. Logical Properties of Stable Conditional Independence. Pages 225--232. Slides.
- Thorsten J. Ottosen and Finn V. Jensen. A* Wars: The Fight for Improving A* Search for Troubleshooting with Dependent Actions. Pages 233--240. Poster.
- Silja Renooij and Linda C. van der Gaag. Discrimination and its Sensitivity in Probabilistic Networks. Pages 241--248. Slides.
- R. Santana, A. Mendiburu and J. A. Lozano. An Empirical Analysis of Loopy Belief Propagation in Three Topologies: Grids, Small-World Networks and Random Graphs. Pages 249--256. Slides.
- Tomi Silander, Teemu Roos, Petri Kontkanen and Petri Myllymaki. Factorized Normalized Maximum Likelihood Criterion for Learning Bayesian Network Structures. Pages 257--264. Slides.
- Jim Q. Smith and Alireza Daneshkhah. Large Incomplete Sample Robustness in Bayesian Networks. Pages 265--272. Slides.
- Federico M. Stefanini. Eliciting Expert Beliefs on the Structure of a Bayesian Network. Pages 273--280.
- M. Studeny and J. Vomlel. A Geometric Approach to Learning BN Structures. Pages 281--288. Slides.
- Nicolaj S\o ndberg-Jeppesen and Finn Verner Jensen. An Influence Diagram Framework for Acting Under Influence by Agents with Unknown Goals. Pages 289--296. Slides.
- Jiri Vomlel and Petr Savicky. Arithmetic Circuits of the Noisy-Or Models. Pages 297--304. Slides.
- Yang Xiang and Franklin Hanshar. Tightly and Loosely Coupled Decision Paradigms in Multiagent Expedition. Pages 305--312. Slides.