2001
DOI: 10.1007/3-540-44794-6_41
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Support Vectors for Reinforcement Learning

Abstract: Support vector machines introduced three important innovations to machine learning research: (a) the application of mathematical programming algorithms to solve optimization problems in machine learning, (b) the control of overfitting by maximizing the margin, and (c) the use of Mercer kernels to convert linear separators into non-linear decision boundaries in implicit spaces. Despite their attractiveness in classification and regression, support vector methods have not been applied to the problem of value fun… Show more

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