15. UAI 1999:
Stockholm, Sweden
Kathryn B. Laskey, Henri Prade (Eds.):
UAI '99: Proceedings of the Fifteenth Conference on Uncertainty in Artificial Intelligence, Stockholm, Sweden, July 30 - August 1, 1999.
Morgan Kaufmann 1999, ISBN 1-55860-614-9
- Teresa Alsinet, Lluis Godo, Sandra Sandri:
On the Semantics and Automated Deduction for PLFC, a Logic of Possibilistic Uncertainty and Fuzziness.
3-12

- Gustavo Arroyo-Figueroa, Luis Enrique Sucar:
A Temporal Bayesian Network for Diagnosis and Prediction.
13-20

- Hagai Attias:
Inferring Parameters and Structure of Latent Variable Models by Variational Bayes.
21-30

- Katy S. Azoury, Manfred K. Warmuth:
Relative Loss Bounds for On-line Density Estirnation with the Exponential Family of Distributions.
31-40

- Philip S. Barry, Kathryn B. Laskey:
An Application of Uncertain Reasoning to Requirements Engineering.
41-48

- Ann Becker, Reuven Bar-Yehuda, Dan Geiger:
Random Algorithms for the Loop Cutset Problem.
49-56

- Salem Benferhat, Didier Dubois, Laurent Garcia, Henri Prade:
Possibilistic logic bases and possibilistic graphs.
57-64

- Magnus Boman, Paul Davidsson, Håkan L. S. Younes:
Artificial Decision Making Under Uncertainty in Intelligent Buildings.
65-70

- Craig Boutilier, Ronen I. Brafman, Holger H. Hoos, David Poole:
Reasoning With Conditional Ceteris Paribus Preference Statements.
71-80

- Craig Boutilier, Moisés Goldszmidt, Bikash Sabata:
Continuous Value Function Approximation for Sequential Bidding Policies.
81-90

- Xavier Boyen, Nir Friedman, Daphne Koller:
Discovering the Hidden Structure of Complex Dynamic Systems.
91-100

- Jie Cheng, Russell Greiner:
Comparing Bayesian Network Classifiers.
101-108

- David Maxwell Chickering, David Heckerman:
Fast Learning from Sparse Data.
109-115

- Gregory F. Cooper, Changwon Yoo:
Causal Discovery from a Mixture of Experimental and Observational Data.
116-125

- James Cussens:
Loglinear models for first-order probabilistic reasoning.
126-133

- Sanjoy Dasgupta:
Learning Polytrees.
134-141

- Denver Dash, Marek J. Druzdzel:
A Hybrid Anytime Algorithm for the Construction of Causal Models From Sparse Data.
142-149

- Richard Dearden, Nir Friedman, David Andre:
Model based Bayesian Exploration.
150-159

- Michael I. Dekhtyar, Alex Dekhtyar, V. S. Subrahmanian:
Hybrid Probabilistic Programs: Algorithms and Complexity.
160-169

- Didier Dubois, Michel Grabisch, Henri Prade, Philippe Smets:
Assessing the value of a candidate: Comparing belief function and possibility theories.
170-177

- Kazuo J. Ezawa, Gregory Napiorkowski, Mariusz Kossarski:
Evaluation of Distributed Intelligence on the Smart Card.
178-187

- Hélène Fargier, Patrice Perny:
Qualitative Models for Decision Under Uncertainty without the Commensurability Assumption.
188-195

- Nir Friedman, Moisés Goldszmidt, Abraham Wyner:
Data Analysis with Bayesian Networks: A Bootstrap Approach.
196-205

- Nir Friedman, Iftach Nachman, Dana Pe'er:
Learning Bayesian Network Structure from Massive Datasets: The "Sparse Candidate" Algorithm.
206-215

- Dan Geiger, David Heckerman:
Parameter Priors for Directed Acyclic Graphical Models and the Characteriration of Several Probability Distributions.
216-225

- Dan Geiger, Christopher Meek:
Quantifier Elimination for Statistical Problems.
226-235

- Phan Hong Giang, Prakash P. Shenoy:
On Transformations between Probability and Spolinian Disbelief Functions.
236-244

- Robert P. Goldman, Christopher W. Geib, Christopher A. Miller:
A New Model of Plan Recognition.
245-254

- Dominique Gruyer, Véronique Berge-Cherfaoui:
Multi-objects association in perception of dynamical situation.
255-262

- Vu A. Ha, Peter Haddawy:
A Hybrid Approach to Reasoning with Partially Elicited Preference Models.
263-270

- David Harmanec:
Faithful Approximations of Belief Functions.
271-278

- Jesse Hoey, Robert St-Aubin, Alan J. Hu, Craig Boutilier:
SPUDD: Stochastic Planning using Decision Diagrams.
279-288

- Thomas Hofmann:
Probabilistic Latent Semantic Analysis.
289-296

- Michael C. Horsch, David L. Poole:
Estimating the Value of Computation in Flexible Information Refinement.
297-304

- Eric Horvitz, Andy Jacobs, David Hovel:
Attention-Sensitive Alerting.
305-313

- Kalev Kask, Rina Dechter:
Mini-Bucket Heuristics for Improved Search.
314-323

- Daphne Koller, Uri Lerner, Dragomir Anguelov:
A General Algorithm for Approximate Inference and Its Application to Hybrid Bayes Nets.
324-333

- Petri Kontkanen, Petri Myllymäki, Tomi Silander, Henry Tirri:
On Supervised Selection of Bayesian Networks.
334-342

- Kevin B. Korb, Ann E. Nicholson, Nathalie Jitnah:
Bayesian Poker.
343-350

- Ryszard Kowalczyk:
On Quantified Linguistic Approximation.
351-358

- Henry E. Kyburg Jr., Choh-Man Teng:
Choosing Among Interpretations of Probability.
359-365

- Pierfrancesco La Mura, Yoav Shoham:
Expected Utility Networks.
366-373

- Christopher Lusena, Tong Li, Shelia Sittinger, Chris Wells, Judy Goldsmith:
My Brain is Full: When More Memory Helps.
374-381

- Anders L. Madsen, Finn Verner Jensen:
Lazy Evaluation of Symmetric Bayesian Decision Problems.
382-390

- Suzanne M. Mahoney, Kathryn B. Laskey:
Representing and Combining Partially Specified CPTs.
391-400

- Yishay Mansour, Satinder P. Singh:
On the Complexity of Policy Iteration.
401-408

- David A. McAllester, Satinder P. Singh:
Approximate Planning for Factored POMDPs using Belief State Simplification.
409-416

- Nicolas Meuleau, Kee-Eung Kim, Leslie Pack Kaelbling, Anthony R. Cassandra:
Solving POMDPs by Searching the Space of Finite Policies.
417-426

- Nicolas Meuleau, Leonid Peshkin, Kee-Eung Kim, Leslie Pack Kaelbling:
Learning Finite-State Controllers for Partially Observable Environments.
427-436

- Robert Mislevy, Russell Almond, Duanli Yan, Linda S. Steinberg:
Bayes Nets in Educational Assessment: Where the Numbers Come From.
437-446

- Stefano Monti, Gregory F. Cooper:
A Bayesian Network Classifier that Combines a Finite Mixture Model and a NaIve Bayes Model.
447-456

- Kevin P. Murphy:
A Variational Approximation for Bayesian Networks with Discrete and Continuous Latent Variables.
457-466

- Kevin P. Murphy, Yair Weiss, Michael I. Jordan:
Loopy Belief Propagation for Approximate Inference: An Empirical Study.
467-475

- James W. Myers, Kathryn B. Laskey, Tod S. Levitt:
Learning Bayesian Networks from Incomplete Data with Stochastic Search Algorithms.
476-485

- Julian R. Neil, Chris S. Wallace, Kevin B. Korb:
Learning Bayesian Networks with Restricted Causal Interactions.
486-493

- Hien Nguyen, Peter Haddawy:
The Decision-Theoretic Interactive Video Advisor.
494-501

- Thomas D. Nielsen, Finn Verner Jensen:
Welldefined Decision Scenarios.
502-511

- Luis E. Ortiz, Leslie Pack Kaelbling:
Accelerating EM: An Empirical Study.
512-521

- Vladimir Pavlovic, Brendan J. Frey, Thomas S. Huang:
Variational Learning in Mixed-State Dynamic Graphical Models.
522-530

- David M. Pennock, Michael P. Wellman:
Graphical Representations of Consensus Belief.
531-540

- Avi Pfeffer, Daphne Koller, Brian Milch, Ken T. Takusagawa:
SPOOK: A system for probabilistic object-oriented knowledge representation.
541-550

- Luigi Portinale, Andrea Bobbio:
Bayesian Networks for Dependability Analysis: an Application to Digital Control Reliability.
551-558

- Silja Renooij, Linda C. van der Gaag:
Enhancing QPNs for Trade-off Resolution.
559-566

- Régis Sabbadin:
A Possibilistic Model for Qualitative Sequential Decision Problems under Uncertainty in Partially Observable Environments.
567-574

- David A. Schum:
Inference Networks and the Evaluation of Evidence: Alternative Analyses.
575-584

- Raffaella Settimi, Jim Q. Smith, A. S. Gargoum:
Approximate Learning in Complex Dynamic Bayesian Networks.
585-593

- Ross D. Shachter:
Efficient Value of Information Computation.
594-601

- Hagit Shatkay:
Learning Hidden Markov Models with Geometrical Constraints.
602-611

- Philippe Smets:
Practical Uses of Belief Functions.
612-621

- Masami Takikawa, Bruce D'Ambrosio:
Multiplicative Factorization of Noisy-Max.
622-630

- Leendert W. N. van der Torre, Yao-Hua Tan:
An Update Semantics for Defeasible Obligations.
631-638

- Volker Tresp, Michael Haft, Reimar Hofmann:
Mixture Approximations to Bayesian Networks.
639-646

- Linda C. van der Gaag, Silja Renooij, C. L. M. Witteman, Berthe M. P. Aleman, Babs G. Taal:
How to Elicit Many Probabilities.
647-654

- Frans Voorbraak:
Probabilistic Belief Change: Expansion, Conditioning and Constraining.
655-662

- Robert L. Welch, Clayton Smith:
Bayesian Control for Concentrating Mixed Nuclear Waste.
663-669

- S. K. Michael Wong, Cory J. Butz:
Contextual Weak Independence in Bayesian Networks.
670-679

- Yanping Xiang, Finn Verner Jensen:
Inference in Multiply Sectioned Bayesian Networks with Extended Shafer-Shenoy and Lazy Propagation.
680-687

- Yanping Xiang, Kim-Leng Poh:
Time-Critical Dynamic Decision Making.
688-695

- Nevin Lianwen Zhang, Stephen S. Lee, Weihong Zhang:
A Method for Speeding Up Value Iteration in Partially Observable Markov Decision Processes.
696-703

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