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Generalization and Scaling in Reinforcement Learningedited by: DS TouretzkyVol. 2 (1990), pp. 550-557.
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AbstractIn associative reinforcement learning, an environment generates input vectors, a learning system generates possible output vectors, and a reinforcement function computes feedback signals from the input-output pairs. The task is to discover and remember input-output pairs that generate rewards. Especially difficult cases occur when rewards are rare, since the expected time for any algorithm can grow exponentially with the size of the problem. Nonetheless, if a reinforcement function possesses...
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