The Graphplan planner has enjoyed considerable success as a planning algorithm for classical STRIPS domains. In this paper we explore the extent to which its representation can be used for probabilistic planning. In particular, we consider an MDP-style framework in which the state of the world is known but actions are probabilistic, and the objective is to produce a finite horizon contingent plan with highest probability of success within the horizon. We describe two extensions of Graphplan in this direction. The first, PGraphplan, produces an optimal contingent plan. It typically suffers a performance hit compared to Graphplan but still appears to be fast compared with other approaches to probabilistic planning problems. The second, TGrap...
In this work, we apply heuristic search to conformant probabilistic planning by adapting planning g...
For most real-world problems the agent operates in only par-tially-known environments. Probabilistic...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
Abstract The Graphplan planner has enjoyed considerable success as a planning algorithm for classic...
favrimjclgcscmuedu Abstract The Graphplan planner has enjoyed considerable success as a planning al...
We consider the problem of planning optimally in potentially concurrent probabilistic domains: actio...
We consider the problem of planning optimally in potentially concurrent probabilistic domains: actio...
This work focuses on developing domain-independent heuristics for probabilistic planning problems ch...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
In this paper, we introduce plan-graph based heuristics to solve a variation of the conformant proba...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
We introduce a new approach to planning in STRIPS-like domains based on constructing and analyzing a...
We introduce a new approach to planning in STRIPS-like domains based on con-structing and analyzing ...
In this work, we apply heuristic search to conformant probabilistic planning by adapting planning g...
For most real-world problems the agent operates in only par-tially-known environments. Probabilistic...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
Abstract The Graphplan planner has enjoyed considerable success as a planning algorithm for classic...
favrimjclgcscmuedu Abstract The Graphplan planner has enjoyed considerable success as a planning al...
We consider the problem of planning optimally in potentially concurrent probabilistic domains: actio...
We consider the problem of planning optimally in potentially concurrent probabilistic domains: actio...
This work focuses on developing domain-independent heuristics for probabilistic planning problems ch...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
In this paper, we introduce plan-graph based heuristics to solve a variation of the conformant proba...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...
We introduce a new approach to planning in STRIPS-like domains based on constructing and analyzing a...
We introduce a new approach to planning in STRIPS-like domains based on con-structing and analyzing ...
In this work, we apply heuristic search to conformant probabilistic planning by adapting planning g...
For most real-world problems the agent operates in only par-tially-known environments. Probabilistic...
AbstractWe introduce a new approach to planning in STRIPS-like domains based on constructing and ana...