For the past 25 years, heuristic search has been used to solve domain-independent probabilistic planning problems, but with heuristics that determinise the problem and ignore precious probabilistic information. To remedy this situation, we explore the use of occupation measures, which represent the expected number of times a given action will be executed in a given state of a policy. By relaxing the well-known linear program that computes them, we derive occupation measure heuristics -- the first admissible heuristics for stochastic shortest path problems (SSPs) taking probabilities into account. We show that these heuristics can also be obtained by extending recent operator-counting heuristic formulations used in deterministic planning. Si...
. Probabilistic back-chaining planners, which use probabilities to represent and reason about uncert...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
The propositional contingent planner ZANDER solves finite-horizon, partially observable, probabilist...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...
Heuristic search is a powerful approach that has successfully been applied to a broad class of plann...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
Search algorithms such as LAO* and LRTDP coupled with admissible heuristics are widely used methods ...
Probabilistic planning captures the uncertainty of plan execution by probabilisti-cally modeling the...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
<p>Planning is an essential part of intelligent behavior and a ubiquitous task for both humans and r...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
In probabilistic planning an agent interacts with an environment and the objective is to find an opt...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
. Probabilistic back-chaining planners, which use probabilities to represent and reason about uncert...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
The propositional contingent planner ZANDER solves finite-horizon, partially observable, probabilist...
For the past 25 years, heuristic search has been used to solve domain-independent probabilistic plan...
Heuristic search is a powerful approach that has successfully been applied to a broad class of plann...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
Search algorithms such as LAO* and LRTDP coupled with admissible heuristics are widely used methods ...
Probabilistic planning captures the uncertainty of plan execution by probabilisti-cally modeling the...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
<p>Planning is an essential part of intelligent behavior and a ubiquitous task for both humans and r...
AbstractSome of the current best conformant probabilistic planners focus on finding a fixed length p...
In probabilistic planning an agent interacts with an environment and the objective is to find an opt...
The current best conformant probabilistic planners encode the problem as a bounded length CSP or SAT...
. Probabilistic back-chaining planners, which use probabilities to represent and reason about uncert...
AbstractWe define the probabilistic planning problem in terms of a probability distribution over ini...
The propositional contingent planner ZANDER solves finite-horizon, partially observable, probabilist...