进化支持向量回归机

R. Stoean, D. Dumitrescu, M. Preuss, C. Stoean
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引用次数: 20

摘要

进化支持向量机(esvm)是一种吸收了最先进的支持向量机(svm)的学习引擎,但通过进化算法(EAs)进化决策函数的系数的新技术。新方法已经完成了它最初开发的目的,即作为解决训练优化部分的标准支持向量机方法的更简单的替代方法。esvm作为支持向量机,是主要应用于分类的天然工具。然而,由于后者已经进一步扩展到也处理回归,本文的范围是提出相应的进化范式。特别地,我们考虑了与Vapnik引入的经典epsi-支持向量回归(epsi-SVR)的杂交以及回归超平面系数的后续演化。在波士顿住房基准问题上验证了epsi-进化支持回归(epsi-ESVR),得到的结果表明esvm也可以作为回归的关注对象
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Support Vector Regression Machines
Evolutionary support vector machines (ESVMs) are a novel technique that assimilates the learning engine of the state-of-the-art support vector machines (SVMs) but evolves the coefficients of the decision function by means of evolutionary algorithms (EAs). The new method has accomplished the purpose for which it has been initially developed, that of a simpler alternative to the canonical SVM approach for solving the optimization component of training. ESVMs, as SVMs, are natural tools for primary application to classification. However, since the latter had been further on extended to also handle regression, it is the scope of this paper to present the corresponding evolutionary paradigm. In particular, we consider the hybridization with the classical epsi-support vector regression (epsi-SVR) introduced by Vapnik and the subsequent evolution of the coefficients of the regression hyperplane. epsi-evolutionary support regression (epsi-ESVR) is validated on the Boston housing benchmark problem and the obtained results demonstrate the promise of ESVMs also as concerns regression
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