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Reward Shaping for Reinforcement Learning with Omega-Regular Objectives

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arxiv 2001.05977 v1 pith:4EP4XSHU submitted 2020-01-16 cs.LO cs.LG

Reward Shaping for Reinforcement Learning with Omega-Regular Objectives

classification cs.LO cs.LG
keywords automatalearninguchiclassmodelreinforcementrewardshaping
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Recently, successful approaches have been made to exploit good-for-MDPs automata (B\"uchi automata with a restricted form of nondeterminism) for model free reinforcement learning, a class of automata that subsumes good for games automata and the most widespread class of limit deterministic automata. The foundation of using these B\"uchi automata is that the B\"uchi condition can, for good-for-MDP automata, be translated to reachability. The drawback of this translation is that the rewards are, on average, reaped very late, which requires long episodes during the learning process. We devise a new reward shaping approach that overcomes this issue. We show that the resulting model is equivalent to a discounted payoff objective with a biased discount that simplifies and improves on prior work in this direction.

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