Poster
Online Regret Bounds for Undiscounted Continuous Reinforcement Learning
Ronald Ortner · Daniil Ryabko
Harrah’s Special Events Center 2nd Floor
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Abstract
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Abstract:
We derive sublinear regret bounds for undiscounted reinforcement learning in continuous state space. The proposed algorithm combines state aggregation with the use of upper confidence bounds for implementing optimism in the face of uncertainty. Beside the existence of an optimal policy which satisfies the Poisson equation, the only assumptions made are Hoelder continuity of rewards and transition probabilities.
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