Journal Article10.1016/J.IPL.2010.08.011
On spectral windows in supervised learning from data
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TL;DR: For Tikhonov regularization in supervised learning from data, the effect on the regularized solution of a joint perturbation of the regression function and the data is investigated.
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About: This article is published in Information Processing Letters. The article was published on 01 Nov 2010. The article focuses on the topics: Supervised learning & Tikhonov regularization.
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