Vector Quantization applied to Reinforcement Learning
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منابع مشابه
Pursuit Reinforcement Competitive Learning: PRCL based Online Clustering with Learning Automata
A new online clustering method based on not only reinforcement and competitive learning but also pursuit algorithm (Pursuit Reinforcement Competitive Learning: PRCL) as well as learning automata is proposed for reaching a relatively stable clustering solution in comparatively short time duration. UCI repository data which are widely used for evaluation of clustering performance in usual is used...
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تاریخ انتشار 1999