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The Sample-Complexity of General Reinforcement Learning
We present a new algorithm for general reinforcement learning where the true
environment is known to belong to a finite class of N arbitrary models. The
algorithm is shown to be near-optimal for all but O(N log^2 N) time-steps with
high probability. Infinite classes are also considered where we show that
compactness is a key criterion for determining the existence of uniform
sample-complexity bounds. A matching lower bound is given for the finite case.Comment: 16 page
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