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Analysis of correlation based dimension reduction methods

机译:基于相关性的降维方法分析

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Dimension reduction is an important topic in data mining and machine learning. Especially dimension reduction combined with feature fusion is an effective preprocessing step when the data are described by multiple feature sets. Canonical Correlation Analysis (CCA) and Discriminative Canonical Correlation Analysis (DCCA) are feature fusion methods based on correlation. However, they are different in that DCCA is a supervised method utilizing class label information, while CCA is an unsupervised method. It has been shown that the classification performance of DCCA is superior to that of CCA due to the discriminative power using class label information. On the other hand, Linear Discriminant Analysis (LDA) is a supervised dimension reduction method and it is known as a special case of CCA. In this paper, we analyze the relationship between DCCA and LDA, showing that the projective directions by DCCA are equal to the ones obtained from LDA with respect to an orthogonal transformation. Using the relation with LDA, we propose a new method that can enhance the performance of DCCA. The experimental results show that the proposed method exhibits better classification performance than the original DCCA.
机译:降维是数据挖掘和机器学习中的重要主题。当数据由多个特征集描述时,尤其是降维与特征融合相结合是一种有效的预处理步骤。典范相关分析(CCA)和判别典范相关分析(DCCA)是基于相关的特征融合方法。但是,它们的不同之处在于DCCA是一种利用类标签信息的监督方法,而CCA是一种不受监督的方法。已经表明,由于使用类别标签信息的判别能力,DCCA的分类性能优于CCA。另一方面,线性判别分析(LDA)是一种有监督的降维方法,被称为CCA的特例。在本文中,我们分析了DCCA与LDA之间的关系,表明对于正交变换,DCCA的投影方向等于从LDA获得的投影方向。利用与LDA的关系,我们提出了一种可以增强DCCA性能的新方法。实验结果表明,该方法具有比原始DCCA更好的分类性能。

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