Ensemble Implementations on Diversified Support Vector Machines

Kunlun Li, Yun-Long Dai, Wei Zhang
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引用次数: 1

Abstract

Support vector machine (SVM) is an effective algorithm in pattern recognition. But usually, standard SVM requires solving a quadratic program (QP) problem. In majority situations, most implementations of SVM are approximate solution to the QP problem. As the approximate solutions cannot achieve the expected performance of SRM theory, it is necessary to research ensemble methods for SVM. Recently, in order to augment the diversities of individual classifiers of SVM, many researchers use random partition with the whole training to form sub-training sets. Therefore the performance of aggregated SVM, which was trained on those subsets, was improved. We proposed the ensemble method based on different implementations of SVM, because they have large diversities by their different implementing methods. The experiment results showed that this method is effectively to improve the aggregated learner's performance.
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多元支持向量机的集成实现
支持向量机(SVM)是一种有效的模式识别算法。但通常,标准支持向量机需要解决一个二次规划(QP)问题。在大多数情况下,支持向量机的大多数实现都是QP问题的近似解。由于近似解不能达到SRM理论的预期性能,因此有必要研究支持向量机的集成方法。近年来,为了增强支持向量机中单个分类器的多样性,许多研究者采用对整个训练集进行随机分割的方法来组成子训练集。因此,在这些子集上进行训练的聚合支持向量机的性能得到了提高。由于支持向量机的不同实现方式存在较大的差异,我们提出了基于不同实现方式的集成方法。实验结果表明,该方法能有效地提高聚合学习者的学习性能。
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