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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Pair- -SVR: A Novel and Efficient Pairing nu-Support Vector Regression Algorithm
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Pair- -SVR: A Novel and Efficient Pairing nu-Support Vector Regression Algorithm

机译:Pair-SVR:一种新颖高效的配对nu-support向量回归算法

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摘要

This paper proposes a novel and efficient pairing nu-support vector regression (pair- -SVR) algorithm that combines successfully the superior advantages of twin support vector regression (TSVR) and classical -SVR algorithms. In spirit of TSVR, the proposed pair- -SVR solves two quadratic programming problems (QPPs) of smaller size rather than a single larger QPP, and thus has faster learning speed than classical -SVR. The significant advantage of our pair- -SVR over TSVR is the improvement in the prediction speed and generalization ability by introducing the concepts of the insensitive zone and the regularization term that embodies the essence of statistical learning theory. Moreover, pair- -SVR has additional advantage of using parameter for controlling the bounds on fractions of SVs and errors. Furthermore, the upper bound and lower bound functions of the regression model estimated by pair- -SVR capture well the characteristics of data distributions, thus facilitating automatic estimation of the conditional mean and predictive variance simultaneously. This may be useful in many cases, especially when the noise is heteroscedastic and depends strongly on the input values. The experimental results validate the superiority of our pair- -SVR in both training/prediction speed and generalization ability.
机译:本文提出了一种新颖高效的配对支持向量回归(pair- -SVR)算法,该算法成功地结合了双重支持向量回归(TSVR)和经典-SVR算法的优越性。本着TSVR的精神,提出的-SVR对解决了两个较小的二次编程问题(QPP),而不是单个较大的QPP,因此其学习速度比经典-SVR快。与-TSVR相比,我们的-SVR的显着优势是通过引入不敏感区域的概念和体现统计学习理论实质的正则化项来提高预测速度和泛化能力。此外,对-SVR具有使用参数来控制SV和错误分数的界限的附加优势。此外,通过对-SVR估计的回归模型的上界和下界函数很好地捕获了数据分布的特征,从而有利于同时自动估计条件均值和预测方差。这在许多情况下可能很有用,尤其是当噪声是异方差的并且在很大程度上取决于输入值时。实验结果验证了我们的配对-SVR在训练/预测速度和泛化能力方面的优越性。

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