2008
DOI: 10.1093/ietfec/e91-a.4.1169
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Reinforcement Learning with Orthonormal Basis Adaptation Based on Activity-Oriented Index Allocation

Abstract: SUMMARY An orthonormal basis adaptation method for function approximation was developed and applied to reinforcement learning with multi-dimensional continuous state space. First, a basis used for linear function approximation of a control function is set to an orthonormal basis. Next, basis elements with small activities are replaced with other candidate elements as learning progresses. As this replacement is repeated, the number of basis elements with large activities increases. Example chaos control problem… Show more

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