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arxiv: 1810.00950 · v1 · pith:2VQFWYYAnew · submitted 2018-09-26 · 💻 cs.LO · cs.LG· stat.ML

Omega-Regular Objectives in Model-Free Reinforcement Learning

classification 💻 cs.LO cs.LGstat.ML
keywords learningmodel-freeobjectivesomegaregularreinforcementtechniqueautomata
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We provide the first solution for model-free reinforcement learning of {\omega}-regular objectives for Markov decision processes (MDPs). We present a constructive reduction from the almost-sure satisfaction of {\omega}-regular objectives to an almost- sure reachability problem and extend this technique to learning how to control an unknown model so that the chance of satisfying the objective is maximized. A key feature of our technique is the compilation of {\omega}-regular properties into limit- deterministic Buechi automata instead of the traditional Rabin automata; this choice sidesteps difficulties that have marred previous proposals. Our approach allows us to apply model-free, off-the-shelf reinforcement learning algorithms to compute optimal strategies from the observations of the MDP. We present an experimental evaluation of our technique on benchmark learning problems.

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