多类分类的核费雪判别方法

Yi-fan Xu, Fang Li, Tao Hu
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引用次数: 2

摘要

核费雪判别分析(Kernel Fisher discriminant analysis, KFD)作为一种分类方法在实践中具有良好的性能。然而,KFD最初是为二元分类而开发的。为了解决多类分类问题,设计了以总偏差最小为目标的多类KFD (MKFD)。通过拉格朗日乘子法,将MKFD转化为二次优化问题,避免了求解特征问题,且数值要求相对较低。此外,MKFD是二元分类的直接推广。最后在实验中对MKFD的性能进行了测试。与其他方法(如支持向量机)相比,结果支持MKFD的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Method of Kernel Fisher Discriminant for Multi-class Classification
Kernel Fisher discriminant analysis (KFD) has good performance in practice as a classification method. However, KFD is initially developed for binary classification. To solving multi-class classification problems, multi-class KFD (MKFD) was designed to minimize total deviation. By Lagrange multiplier method, MKFD was transformed to be a quadratic optimization problem that can avoid solving eigenproblem and be less numerical demanding relatively. Moreover it is shown that MKFD is a direct generalization of the binary classification. Finally the performance of MKFD was tested on the benchmark datasets in experiments. The results support usefulness of MKFD, compared with other methods such as support vector machines
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