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AAAI 2004

Solving Concurrent Markov Decision Processes

Conference Paper Uncertainty Artificial Intelligence

Abstract

Typically, Markov decision problems (MDPs) assume a single action is executed per decision epoch, but in the real world one may frequently execute certain actions in parallel. This paper explores concurrent MDPs, MDPs which allow multiple non-conflicting actions to be executed simultaneously, and presents two new algorithms. Our first approach exploits two provably sound pruning rules, and thus guarantees solution optimality. Our second technique is a fast, sampling-based algorithm, which produces close-to-optimal solutions extremely quickly. Experiments show that our approaches outperform the existing algorithms producing up to two orders of magnitude speedup.

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Context

Venue
AAAI Conference on Artificial Intelligence
Archive span
1980-2026
Indexed papers
28718
Paper id
1148211063220833696