Evaluate the performance of the support vector machines ensemble

Bowen Liu, Yihui Qiu
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Abstract

Diversity among the members of classifiers is deemed to be a key point in classifier ensemble. However, there doesn’t exist a widely accepted diversity measure and construct. In this paper, we propose a sample and feature double random construction of training sample variability. A support vector machine is used as the base classifier to construct the difference by distinguishing the regularization term C and the kernel function. Based on the negative correlation theory, the base classifier generalization error and disparity judgment functions are proposed, and the base classifier is integrated by ranking according to the judgment functions, which could achieve a higher accuracy rate by the support vector machine ensemble.
评估支持向量机集成的性能
分类器成员之间的多样性被认为是分类器集成的关键。然而,目前还没有一个被广泛接受的多样性测度和结构。在本文中,我们提出了一种样本和特征双随机结构的训练样本变异性。使用支持向量机作为基分类器,通过区分正则化项C和核函数来构造差值。基于负相关理论,提出了基分类器泛化误差和视差判断函数,并根据判断函数对基分类器进行排序集成,通过支持向量机集成实现更高的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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