Regression Based on Support Vector Classification

نویسنده

  • Marcin Orchel
چکیده

In this article, we propose a novel regression method which is based solely on Support Vector Classification. The experiments show that the new method has comparable or better generalization performance than ε-insensitive Support Vector Regression. The tests were performed on synthetic data, on various publicly available regression data sets, and on stock price data. Furthermore, we demonstrate how a priori knowledge which has been already incorporated to Support Vector Classification for predicting indicator functions, could be directly used for a regression problem.

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تاریخ انتشار 2011