Fully observable decision-theoretic planning problems are commonly modeled as stochastic shortest path (SSP) problems. For this class of planning problems, heuristic search algorithms (including LAO*, RTDP, and related algorithms), as well as the value iteration algorithm on which they are based, lack an efficient test for convergence to an ε-optimal policy (except in the special case of discounting). We introduce a simple and efficient test for convergence that applies to SSP problems with positive action costs. The test can detect whether a policy is proper, that is, whether it achieves the goal state with probability 1. If proper, it gives error bounds that can be used to detect convergence to an ε-optimal solution. The convergence test ...
Comunicació presentada a: ICAPS 2011 celebrat de l'11 al 16 de juny de 2011 a Freiburg, Alemanya.Res...
Heuristic search is a powerful approach that has successfully been applied to a broad class of plann...
Stochastic shortest-path problems (SSP) are an important subclass of MDPs for which heuristic search...
We consider recently-derived error bounds that can be used to bound the quality of solutions found b...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
Real-world decision problems often involve multiple competing objectives. The Stochastic Shortest P...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
Stochastic Shortest Path problems (SSPs) can be efficiently dealt with by the Real-Time Dynamic Prog...
International audienceWe study the problem of learning in the stochastic shortest path (SSP) setting...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
In this paper, we consider planning in stochastic shortest path problems, a subclass of Markov Decis...
We consider the stochastic shortest path problem, a classical finite-state Markovian decision proble...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
Research in efficient methods for solving infinite-horizon MDPs has so far concentrated primarily on...
Stochastic Shortest Path problems (SSPs) can be efficiently dealt with by the Real-Time Dynamic Prog...
Comunicació presentada a: ICAPS 2011 celebrat de l'11 al 16 de juny de 2011 a Freiburg, Alemanya.Res...
Heuristic search is a powerful approach that has successfully been applied to a broad class of plann...
Stochastic shortest-path problems (SSP) are an important subclass of MDPs for which heuristic search...
We consider recently-derived error bounds that can be used to bound the quality of solutions found b...
Stochastic Shortest Path Problems (SSPs) are a common representation for probabilistic planning prob...
Real-world decision problems often involve multiple competing objectives. The Stochastic Shortest P...
Two extreme approaches can be applied to solve a probabilistic planning problem, namely closed loop ...
Stochastic Shortest Path problems (SSPs) can be efficiently dealt with by the Real-Time Dynamic Prog...
International audienceWe study the problem of learning in the stochastic shortest path (SSP) setting...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
In this paper, we consider planning in stochastic shortest path problems, a subclass of Markov Decis...
We consider the stochastic shortest path problem, a classical finite-state Markovian decision proble...
We consider the problem of generating optimal stochastic policies for Constrained Stochastic Shortes...
Research in efficient methods for solving infinite-horizon MDPs has so far concentrated primarily on...
Stochastic Shortest Path problems (SSPs) can be efficiently dealt with by the Real-Time Dynamic Prog...
Comunicació presentada a: ICAPS 2011 celebrat de l'11 al 16 de juny de 2011 a Freiburg, Alemanya.Res...
Heuristic search is a powerful approach that has successfully been applied to a broad class of plann...
Stochastic shortest-path problems (SSP) are an important subclass of MDPs for which heuristic search...