Influence diagrams (IDs) are graphical models for representing and reasoning with sequential decision-making problems under uncertainty. Limited memory influence diagrams (LIMIDs) model a decision-maker (DM) who forgets the history in the course of making a sequence of decisions. The standard inference task in IDs and LIMIDs is to compute the maximum expected utility (MEU), which is one of the most challenging tasks in graphical models. We present a model decomposition framework in both IDs and LIMIDs, which we call submodel decomposition that generates a tree of single-stage decision problems through a tree clustering scheme. We also develop a valuation algebra over the submodels that leads to a hierarchical message passing algorithm that ...
AbstractInfluence diagrams and decision trees represent the two most common frameworks for specifyin...
Interactive dynamic influence diagrams (I-DIDs) are graphical models for sequential decision making ...
AbstractIn this article we present the framework of Possibilistic Influence Diagrams (PID), which al...
Graphical models provide a unified framework for modeling and reasoning about complex tasks. Example...
Influence diagrams provide a modeling and inference framework for sequential decision problems, repr...
Influence diagrams (ID) are graphical frameworks for decision making in stochastic situations with m...
Graphical models provide a powerful framework for reasoning under uncertainty, and an influence diag...
This thesis addresses some drawbacks related to the evaluation of influence diagrams (ID), which is ...
International audienceThis paper is devoted to automated sequential decision in AI. More precisely, ...
Interactive dynamic influence diagrams (I-DIDs) are graphical models for sequential decision making ...
There are three phases in the life of a decision problem, specification, solution, and rep-resentati...
This paper is devoted to automated sequential decision in AI. More precisely, we focus here on the R...
We give an introduction to the theory of probabilistic graphical models and describe several types o...
\u3cp\u3eWe present a new algorithm for exactly solving decision making problems represented as inue...
A limited-memory influence diagram (LIMID) generalizes a traditional influence diagram by relaxing t...
AbstractInfluence diagrams and decision trees represent the two most common frameworks for specifyin...
Interactive dynamic influence diagrams (I-DIDs) are graphical models for sequential decision making ...
AbstractIn this article we present the framework of Possibilistic Influence Diagrams (PID), which al...
Graphical models provide a unified framework for modeling and reasoning about complex tasks. Example...
Influence diagrams provide a modeling and inference framework for sequential decision problems, repr...
Influence diagrams (ID) are graphical frameworks for decision making in stochastic situations with m...
Graphical models provide a powerful framework for reasoning under uncertainty, and an influence diag...
This thesis addresses some drawbacks related to the evaluation of influence diagrams (ID), which is ...
International audienceThis paper is devoted to automated sequential decision in AI. More precisely, ...
Interactive dynamic influence diagrams (I-DIDs) are graphical models for sequential decision making ...
There are three phases in the life of a decision problem, specification, solution, and rep-resentati...
This paper is devoted to automated sequential decision in AI. More precisely, we focus here on the R...
We give an introduction to the theory of probabilistic graphical models and describe several types o...
\u3cp\u3eWe present a new algorithm for exactly solving decision making problems represented as inue...
A limited-memory influence diagram (LIMID) generalizes a traditional influence diagram by relaxing t...
AbstractInfluence diagrams and decision trees represent the two most common frameworks for specifyin...
Interactive dynamic influence diagrams (I-DIDs) are graphical models for sequential decision making ...
AbstractIn this article we present the framework of Possibilistic Influence Diagrams (PID), which al...