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Using Double Regularization to Improve the Effectiveness and Robustness of Fisher Discriminant Analysis as A Projection Technique

机译:使用双重正则化提高Fisher判别分析作为投影技术的有效性和稳健性

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Fisher Linear Discriminant Analysis (LDA) is a widely-used projection technique. Its application includes face recognition and speaker recognition. The kernel version of LDA (KDA) has also been developed, which generalizes LDA by introducing a kernel. LDA and KDA consists of a within-class scatter matrix and a between-class scatter matrix. The original formulations of LDA and KDA involve the inversion of the within-class scatter matrix, which may have singularity problem. A simple way to prevent singularity is adding a regularization term to the within-class scatter matrix. The resulting LDA and KDA are called Regularized LDA (RLDA) and Regularized KDA (RKDA). In this paper, we experimentally investigate how this regularization term will influence the performance of LDA and KDA. In addition, we introduce an extra regularization term to the between-class scatter matrix, and the resulting LDA and KDA are then called Doubly Regularized LDA (D-RLDA) and Doubly Regularized KDA (D-RKDA). We then apply LDA, KDA, RLDA, RKDA, D-RLDA and D-RKDA as a feature projection technique to two audio signal classification tasks. Gaussian Supervector (GSV) is used as the feature vector and linear Support Vector Machine (SVM) is used as the classifier. Experimental results show that, RLDA, D-RLDA, RKDA and D- RKDA are more effective than the conventional LDA and KDA. Besides, D-RLDA and D-RKDA are more robust than RLDA and RKDA.
机译:Fisher线性判别分析(LDA)是一种广泛使用的投影技术。它的应用包括面部识别和说话人识别。还开发了内核版本的LDA(KDA),它通过引入内核来概括LDA。 LDA和KDA由一个类内散布矩阵和一个类间散布矩阵组成。 LDA和KDA的原始公式涉及类内散射矩阵的求逆,这可能会有奇点问题。防止奇异性的一种简单方法是将正则化项添加到类内散布矩阵中。生成的LDA和KDA称为正则化LDA(RLDA)和正则化KDA(RKDA)。在本文中,我们通过实验研究了该正则项将如何影响LDA和KDA的性能。此外,我们在类间散布矩阵中引入了一个额外的正则化项,然后将所得的LDA和KDA称为双正则化LDA(D-RLDA)和双正则化KDA(D-RKDA)。然后,我们将LDA,KDA,RLDA,RKDA,D-RLDA和D-RKDA作为特征投影技术应用于两个音频信号分类任务。高斯超向量(GSV)用作特征向量,线性支持向量机(SVM)用作分类器。实验结果表明,RLDA,D-RLDA,RKDA和D-RKDA比常规LDA和KDA更有效。此外,D-RLDA和D-RKDA比RLDA和RKDA更强大。

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