Least-square regularized regression with non-iid sampling |
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Authors: | Zhi-Wei Pan Quan-Wu Xiao |
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Affiliation: | Joint Advanced Research Center, University of Science and Technology of China and City University of Hong Kong, Suzhou, Jiangshu 215123, China |
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Abstract: | We study the least-square regression learning algorithm generated by regularization schemes in reproducing kernel Hilbert spaces. A non-iid setting is considered: the sequence of probability measures for sampling is not identical and the sampling may be dependent. When the sequence of marginal distributions for sampling converges exponentially fast in the dual of a Hölder space and the sampling process satisfies a polynomial strong mixing condition, we derive learning rates for the learning algorithm. |
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Keywords: | 68T05 62J02 |
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