文章詳目資料

Journal of Computers EIMEDLINEScopus

  • 加入收藏
  • 下載文章
篇名 Proximal Support Vector Machine with Mixed Norm
卷期 29:1
作者 Zhi LiJun-Yan TanYong-Ning ZhaoLin YeRui-Kun Ma
頁次 063-075
關鍵字 binary classificationfeature selectionnonlinear classificationp-normproximal support vector machineEIMEDLINEScopus
出刊日期 201802
DOI 10.3966/199115992018012901006

中文摘要

英文摘要

This paper proposes a new version of support vector machine (SVM) for binary classification named mixed norm proximal support vector machine, MPSVM for short. By introducing the p-norm of the normal vector of the classification hyper-plane into the objective function of proximal SVM, we get the objective function of MPSVM. MPSVM is an adaptive learning procedure with p-norm (0 < p < 1), where p can be automatically chosen by data. By adjusting the parameter p, MPSVM can realize feature selection and classification simultaneously. Since the optimization problem of MBPSVM is neither convex nor differentiable, an iterative algorithm is used to solve it. Experiments carried out on several standard UCI datasets show a clear improvement over some popular methods.

本卷期文章目次

相關文獻