2016
DOI: 10.1155/2016/2305854
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Kernel Recursive Least-Squares Temporal Difference Algorithms with Sparsification and Regularization

Abstract: By combining with sparse kernel methods, least-squares temporal difference (LSTD) algorithms can construct the feature dictionary automatically and obtain a better generalization ability. However, the previous kernel-based LSTD algorithms do not consider regularization and their sparsification processes are batch or offline, which hinder their widespread applications in online learning problems. In this paper, we combine the following five techniques and propose two novel kernel recursive LSTD algorithms: (i) … Show more

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