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Conference
Conference title 14th Conference on Uncertainty in Artificial Intelligence
Related conference title(s) UAI '98
Date(s), location 24 - 26 Jul 1998, Madison, WI, USA
Editor(s) Cooper, G F (ed.) ; Moral, S (ed.)
Imprint San Francisco, CA : Morgan and Kaufmann, 1998
ISBN 155860555X
9781558605558
Subject category Computing and Computers
To loan this literature, see Library holdings in the CERN Library Catalogue website.


Contributions to this conference in CDS

On the Acceptability of Arguments in Preference-based Argumentation (p. 1)
by Amgoud, L
Merging uncertain knowledge bases in a possibilistic logic framework (p. 8)
by Benferhat, S
A Hybrid Algorithm to Compute Marginal and Joint Beliefs in Bayesian Networks and Its Complexity (p. 16)
by Bloemeke, M
Structured Reachability Analysis for Markov Decision Processes (p. 24)
by Boutilier, C
Tractable Inference for Complex Stochastic Processes (p. 33)
by Boyen, X
Empirical Analysis of Predictive Algorithms for Collaborative Filtering (p. 43)
by Breese, J S
Query Expansion in Information Retrieval Systems using a Bayesian Network-Based Thesaurus (p. 53)
by De Campos, L M
Dealing with Uncertainty in Situation Assessment : towards a Symbolic Approach(p. 61)
by Castel, C
Marginalizing in Undirected Graph and Hypergraph Models (p. 69)
by Castillo, E F
Utility Elicitation as a Classification Problem (p. 79)
by Chajewska, U S
Irrelevance and Independence Relations in Quasi-Bayesian Networks (p. 89)
by Cozman, F
Dynamic Jointrees (p. 97)
by Darwiche, A
On the Semi-Markov Equivalence of Causal Models (p. 105)
by Desjardins, B
Comparative uncertainty, belief functions and accepted beliefs (p. 113)
by Dubois, D
Qualitative Decision Theory with Sugeno Integrals (p. 121)
by Dubois, D
The Bayesian Structural EM Algorithm (p. 129)
by Friedman, N
Learning the Structure of Dynamic Probabilistic Networks (p. 139)
by Friedman, N
Learning by Transduction (p. 148)
by Gammerman, A
Graphical Models and Exponential Families (p. 156)
by Geiger, D
Psychological and Normative Theories of Causal Power and the Probabilities of Causes (p. 166)
by Glymour, C
Updating Sets of Probabilities (p. 173)
by Grove, A J
Minimum Encoding Approaches for Predictive Modeling (p. 183)
by Gruenwald, P
Toward Case-Based Preference Elicitation : Similarity Measures on Preference Structures(p. 193)
by Ha, V
Axiomatizing Causal Reasoning (p. 202)
by Halpern, J Y
Solving POMDPs by Searching in Policy Space (p. 211)
by Hansen, E A
Hierarchical solution of Markov decision processes using macro-actions (p. 220)
by Hauskrecht, M
Inferring Informational Goals from Free-Text Queries : A Bayesian Approach(p. 230)
by Heckerman, D
Evaluating Las Vegas Algorithms-Pitfalls and Remedies (p. 238)
by Hoos, H H
An Anytime Algorithm for Decision Making under Uncertainty (p. 246)
by Horsch, M C
The Lumiere Project : Bayesian User Modeling for Inferring the Goals and Needs of Software Users(p. 256)
by Horvitz, E
Any Time Probabilistic Reasoning for Sensor Validation (p. 266)
by Ibargueengoytia, P H
Measure Selection : Notions of Rationality and Representation Independence(p. 274)
by Jäger, M
Implementing Resolute Choice Under Uncertainty (p. 282)
by Jaffray, J Y
Dealing with uncertainty on the initial state of a Petri net (p. 289)
by Jarkass, I
Hierarchical Mixtures-of-Experts for Exponential Family Regression Models with Generalized Linear Mean Functions : A Survey of Approximation and Consistency Results(p. 296)
by Jiang, W
Exact Inference of Hidden Structure from Sample Data in Noisy-OR Networks (p. 304)
by Kearns, M
Large Deviation Methods for Approximate Probabilistic Inference (p. 311)
by Kearns, M
Mixture Representations for Inference and Learning in Boltzmann Machines (p. 320)
by Lawrence, N D
A Comparison of Lauritzen-Spiegelhalter, Hugin, and Shenoy-Shafer Architectures for Computing Marginals of Probability Distributions (p. 328)
by Lepar, V
Incremental Tradeoff Resolution in Qualitative Probabilistic Networks (p. 338)
by Liu, C L
Using Qualitative Relationships for Bounding Probability Distributions (p. 346)
by Liu, C L
Magic Inference Rules for Probabilistic Deduction under Taxonomic Knowledge (p. 354)
by Lukasiewicz, T
Lazy Propagation in Junction Trees (p. 362)
by Madsen, A L
Constructing Situation Specific Belief Networks (p. 370)
by Mahoney, S M
Treatment Choice in Heterogeneous Populations Using Experiments without Covariate Data (Invited Paper (p. 379)
by Manski, C F
An Experimental Comparison of Several Clustering and Initialization Methods (p. 386)
by Meila, M
From Likelihood to Plausibility (p. 396)
by Monney, P A
A Multivariate Discretization Method for Learning Bayesian Networks from Mixed Data (p. 404)
by Monti, S
Resolving Conflicting Arguments under Uncertainties (p. 414)
by Ng, B H K
Flexible Decomposition Algorithms for Weakly Coupled Markov Decision Problems (p. 422)
by Parr, R
Logarithmic Tune Parallel Bayesian Inference (p. 431)
by Pennock, D M
Learning From What You Don't Observe (p. 439)
by Peot, M A
Context-specific approximation in probabilistic inference (p. 447)
by Poole, D
Empirical Evaluation of Approximation Algorithms for Probabilistic Decoding (p. 455)
by Rish, I
Decision Theoretic Foundations of Graphical Model Selection (p. 464)
by Sebastiani, P
On the Geometry of Bayesian Graphical Models with Hidden Variables (p. 472)
by Settimi, R
Bayes-Ball : The Rational Pastime (for Determining Irrelevance and Requisite Information in Belief Networks and Influence Diagrams(p. 480)
by Shachter, R D
Switching Portfolios (p. 488)
by Singer, Y
Bayesian Networks from the Point of View of Chain Graphs (p. 496)
by Studeny, M
Learning Mixtures of DAG Models (p. 504)
by Thiesson, B
Probabilistic Inference in Influence Diagrams (p. 514)
by Zhang, N L
Planning with Partially Observable Markov Decision Processes : Advances in Exact Solution Method(p. 523)
by Zhang, N L
Flexible and Approximate Computation through State-Space Reduction (p. 531)
by Zhang, W

Show contributions in CDS



 Record created 1999-11-08, last modified 2021-07-30