A New Smooth Support Vector Regression Based on ε-Insensitive Logistic Loss Function

作者: Yang Hui-zhong , Shao Xin-guang , Ding Feng

DOI: 10.1007/11539087_4

关键词:

摘要: … In order to avoid SSVR’s disadvantages, a new smooth support vector regression based on ϵ-insensitive logistic loss function was proposed in this paper. The paper is organized as …

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