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IJCAI 2007

Conference Paper Planning and Scheduling Artificial Intelligence

Abstract

Markov Decision Processes are a powerful framework for planning under uncertainty, but current algorithms have difficulties scaling to large problems. We present a novel probabilistic planner based on the notion of hybridizing two algorithms. In particular, we hybridize GPT, an exact MDP solver, with MBP, a planner that plans using a qualitative (non-deterministic) model of uncertainty. Whereas exact MDP solvers produce optimal solutions, qualitative planners sacrifice optimality to achieve speed and high scalability. Our hybridized planner, HybPlan, is able to obtain the best of both techniques --- speed, quality and scalability. Moreover, HybPlan has excellent anytime properties and makes effective use of available time and memory.

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Context

Venue
International Joint Conference on Artificial Intelligence
Archive span
1969-2025
Indexed papers
14525
Paper id
359056251412302803