Extreme Support Vector Regression

نویسندگان

  • Wentao Zhu
  • Jun Miao
چکیده

Extreme Support Vector Machine (ESVM), a variant of ELM, is a nonlinear SVM algorithm based on regularized least squares optimization. In this chapter, a regression algorithm, Extreme Support Vector Regression (ESVR), is proposed based on ESVM. Experiments show that, ESVR has a better generalization ability than the traditional ELM.Furthermore, ESVMcan reach comparable accuracy as SVR and LS-SVR, but has much faster learning speed.

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تاریخ انتشار 2014