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张海樟

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期刊论文

Margin Error Bounds for Support Vector Machines on Reproducing Kernel Banach Spaces

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Neural Computation,2017,29(11):3078–3093& | 2017年11月01日 | https://doi.org/10.1162/neco_a_01013

URL:https://direct.mit.edu/neco/article/29/11/3078/8321/Margin-Error-Bounds-for-Support-Vector-Machines-on

摘要/描述

Support vector machines, which maximize the margin from patterns to the separation hyperplane subject to correct classification, have received remarkable success in machine learning. Margin error bounds based on Hilbert spaces have been introduced in the literature to justify the strategy of maximizing the margin in SVM. Recently, there has been much interest in developing Banach space methods for machine learning. Large margin classification in Banach spaces is a focus of such attempts. In this letter we establish a margin error bound for the SVM on reproducing kernel Banach spaces, thus supplying statistical justification for large-margin classification in Banach spaces.

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