Probabilistic Graphical Models, 2014 7th European Workshop, PGM 2014, Utrecht, The Netherlands, September 17-19, 2014. Proceedings Lecture Notes in Artificial Intelligence Series
Coordonnateurs : van der Gaag Linda C., Feelders Ad J.
Structural Sensitivity for the Knowledge Engineering of Bayesian Networks.- A Pairwise Class Interaction Framework for Multilabel Classification.- From Information to Evidence in a Bayesian Network.- Learning Gated Bayesian Networks for Algorithmic Trading.- Local Sensitivity of Bayesian Networks to Multiple Simultaneous Parameter Shifts.- Bayesian Network Inference Using Marginal Trees.- On SPI-Lazy Evaluation of Influence Diagrams.- Extended Probability Trees for Probabilistic Graphical Models.- Mixture of Polynomials Probability Distributions for Grouped Sample Data.- Trading off Speed and Accuracy in Multilabel Classification.- Robustifying the Viterbi algorithm.- Extended Tree Augmented Naive Classifier.- Evaluation of Rules for Coping with Insufficient Data in Constraint-based Search Algorithms.- Supervised Classification Using Hybrid Probabilistic Decision Graphs.- Towards a Bayesian Decision Theoretic Analysis of Contextual Effect Modifiers.- Discrete Bayesian Network Interpretation of the Cox's Proportional Hazards Model.- Minimizing Relative Entropy in Hierarchical Predictive Coding.- Treewidth and the Computational Complexity of MAP Approximations.- Bayesian Networks with Function Nodes.- A New Method for Vertical Parallelisation of TAN Learning Based on Balanced Incomplete Block Designs.- Equivalences Between Maximum A Posteriori Inference in Bayesian Networks and Maximum Expected Utility Computation in Influence Diagrams.- Speeding Up $k$-Neighborhood Local Search in Limited Memory Influence Diagrams.- Inhibited Effects in CP-logic.- Learning Parameters in Canonical Models using Weighted Least Squares.- Learning Marginal AMP Chain Graphs under Faithfulness.- Learning Maximum Weighted (k+1)-order Decomposable Graphs by Integer Linear Programming.- Multi-label Classification for Tree and Directed Acyclic Graphs Hierarchies.- Min-BDeu and Max-BDeu Scores for Learning Bayesian Networks.- Causal Discovery from Databases with Discrete and Continuous Variables.- On Expressiveness of the AMP Chain Graph Interpretation.- Learning Bayesian Network Structures when Discrete and Continuous Variables are Present.- Learning Neighborhoods of High Confidence in Constraint-Based Causal Discovery.- Causal Independence Models for Continuous Time Bayesian Networks.- Expressive Power of Binary Relevance and Chain Classifiers Based on Bayesian Networks for Multi-Label Classification.- An Approximate Tensor-Based Inference Method Applied to the Game of Minesweeper.- Compression of Bayesian Networks with NIN-AND Tree Modeling.- A Study of Recently Discovered Equalities about Latent Tree Models using Inverse Edges.- An Extended MPL-C Model for Bayesian Network Parameter Learning with Exterior Constraints.
Date de parution : 09-2014
Ouvrage de 598 p.
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Ajouter au panierThèmes de Probabilistic Graphical Models :
Mots-clés :
Bayesian networks; artificial intelligence; belief networks; classification; data mining; decision networks; graph algorithms; graph theory; influence diagrams; learning in probabilistic graphical models; machine learning; probabilistic representations; probability and statistics; search methods; trees