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Using discriminant analysis for multi-class classification: an experimental investigation

机译:使用判别分析进行多类别分类:一项实验研究

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摘要

Many supervised machine learning tasks can be cast as multi-class classification problems. Support vector machines (SVMs) excel at binary classification problems, but the elegant theory behind large-margin hyperplane cannot be easily extended to their multi-class counterparts. On the other hand, it was shown that the decision hyperplanes for binary classification obtained by SVMs are equivalent to the solutions obtained by Fisher's linear discriminant on the set of support vectors. Discriminant analysis approaches are well known to learn discriminative feature transformations in the statistical pattern recognition literature and can be easily extend to multi-class cases. The use of discriminant analysis, however, has not been fully experimented in the data mining literature. In this paper, we explore the use of discriminant analysis for multi-class classification problems. We evaluate the performance of discriminant analysis on a large collection of benchmark datasets and investigate its usage in text categorization. Our experiments suggest that discriminant analysis provides a fast, efficient yet accurate alternative for general multi-class classification problems.
机译:许多受监督的机器学习任务可以转换为多类分类问题。支持向量机(SVM)擅长于二进制分类问题,但是大幅度超平面背后的优雅理论不能轻易扩展到它们的多类对应物上。另一方面,证明了通过支持向量机获得的用于二进制分类的决策超平面等同于在支持向量集上通过费舍尔线性判别式获得的解。判别分析方法是众所周知的,可以学习统计模式识别文献中的判别特征转换,并且可以轻松地扩展到多类案例。但是,判别分析的使用尚未在数据挖掘文献中进行充分试验。在本文中,我们探索了判别分析在多类分类问题中的应用。我们在大量基准数据集上评估判别分析的性能,并研究其在文本分类中的用法。我们的实验表明,判别分析为一般的多类分类问题提供了一种快速,有效而准确的替代方法。

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