Our research’s aim is to explore the use of constraint satisfaction techniques in probabilistic planning. We first focus on two special cases that make different assumptions on the observability of the domain: the conformant probabilistic planning problem (CfPP), where the agent’s environment is not observable, and the contingent probabilistic planning problem (CtPP), where the environment is fully observable. A paper describing some of our work on the first case has been accepted to the technical program of ICAPS 2003 under the title “Conformant Probabilistic Planning via CSPs”. We are currently working on applying similar techniques to CtPP. So far, our research has resulted in exhibiting two independent types of structure that probabilis...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called P...
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called P...
Conformant probabilistic planning (CPP) differs from conformant planning (CP) by two key elements: t...
We present a new algorithm for conformant probabilistic planning, which for a given horizon produces...
Abstract. A CSP based algorithm for the conformant probabilistic planning problem (CPP) has been pre...
In CPP, we are given a set of actions (assumed deterministic in this paper), a distribution over in...
We extend RBPP, the state-of-the-art, translation-based planner for conformant probabilistic plannin...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
In this paper, we introduce plan-graph based heuristics to solve a variation of the conformant proba...
We present a partial-order, conformant, probabilistic planner, Probapop which competed in the blind ...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
Probabilistic conformant planning is a task of finding a plan that achieves the goal without sensing...
Probabilistic conformant planning is a task of finding a plan that achieves the goal without sensing...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called P...
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called P...
Conformant probabilistic planning (CPP) differs from conformant planning (CP) by two key elements: t...
We present a new algorithm for conformant probabilistic planning, which for a given horizon produces...
Abstract. A CSP based algorithm for the conformant probabilistic planning problem (CPP) has been pre...
In CPP, we are given a set of actions (assumed deterministic in this paper), a distribution over in...
We extend RBPP, the state-of-the-art, translation-based planner for conformant probabilistic plannin...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
The main focus of our work is the use of classical planning algorithms in service of more complex pr...
In this paper, we introduce plan-graph based heuristics to solve a variation of the conformant proba...
We present a partial-order, conformant, probabilistic planner, Probapop which competed in the blind ...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
Probabilistic conformant planning is a task of finding a plan that achieves the goal without sensing...
Probabilistic conformant planning is a task of finding a plan that achieves the goal without sensing...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called P...
We present a new algorithm for probabilistic planning with no observability. Our algorithm, called P...