We present an anytime algorithm which computes policies for decision problems represented as multi-stage influence diagrams. Our algorithm constructs policies incrementally, starting from a policy which makes no use of the available information. The incremental process constructs policies which includes more of the information available to the decision maker at each step. While the process converges to the optimal policy, our approach is designed for situations in which computing the optimal policy is infeasible. We provide examples of the process on several large decision problems, showing that, for these examples, the process constructs valuable (but sub-optimal) policies before the optimal policy would be available by traditional methods...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
International audienceThis paper addresses the question of sequential collective decision making und...
Unconstrained influence diagrams (UIDs) extend the language of influence diagrams to cope with decis...
Decision making under uncertainty addresses the problem of deciding which actions to take in the wo...
Unconstrained influence diagrams extend the language of influence diagrams to cope with decision pro...
This paper describes a real-time decision-making model that combines the expressiveness and flexibil...
When to make a decision is a key question in decision making problems characterized by uncertainty. ...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
This paper presents a planning algorithm designed to deal with problems in dynamic environments and...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
The complexity of reasoning in intelligent systems makes it undesirable, and sometimes infeasible, t...
AbstractIn this article we present the framework of Possibilistic Influence Diagrams (PID), which al...
A popular approach to solving a decision process with non-Markovian rewards (NMRDP) is to exploit ...
Abstract — We present an algorithm to calculate the control input when the processing resources avai...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
International audienceThis paper addresses the question of sequential collective decision making und...
Unconstrained influence diagrams (UIDs) extend the language of influence diagrams to cope with decis...
Decision making under uncertainty addresses the problem of deciding which actions to take in the wo...
Unconstrained influence diagrams extend the language of influence diagrams to cope with decision pro...
This paper describes a real-time decision-making model that combines the expressiveness and flexibil...
When to make a decision is a key question in decision making problems characterized by uncertainty. ...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
This paper presents a planning algorithm designed to deal with problems in dynamic environments and...
The problem of making decisions is ubiquitous in life. This problem becomes even more complex when t...
The complexity of reasoning in intelligent systems makes it undesirable, and sometimes infeasible, t...
AbstractIn this article we present the framework of Possibilistic Influence Diagrams (PID), which al...
A popular approach to solving a decision process with non-Markovian rewards (NMRDP) is to exploit ...
Abstract — We present an algorithm to calculate the control input when the processing resources avai...
We investigate algorithms for different steps in the decision making process, focusing on systems wh...
This chapter discusses decision making under uncertainty. More specifically, it offers an overview o...
International audienceThis paper addresses the question of sequential collective decision making und...