考虑经验两两分类错误率的改进线性判别分析

Hung-Shin Lee, Berlin Chen
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引用次数: 2

摘要

线性判别分析(LDA)旨在寻求一种线性变换,将数据集投影到低维特征空间中,以获得最大的类几何可分性。LDA不能总是保证更好的分类精度,因为它的公式并没有考虑到分类器的特性,比如自动语音识别器(ASR)。本文研究了语音特征类对的马氏距离与经验分类错误率之间的关系,并在此基础上提出了一种新的LDA准则——距离-误差耦合LDA (DE-LDA)。DE-LDA的一个显著特点是,它可以通过使用经验误差函数来调节每个类对类间散射的贡献,同时保持LDA的轻量级可解性。实验结果似乎表明,在LVCSR任务上,DE-LDA比LDA有适度的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Linear Discriminant Analysis Considering Empirical Pairwise Classification Error Rates
Linear discriminant analysis (LDA) is designed to seek a linear transformation that projects a data set into a lower-dimensional feature space for maximum class geometrical separability. LDA cannot always guarantee better classification accuracy, since its formulation is not in light of the properties of the classifiers, such as the automatic speech recognizer (ASR). In this paper, the relationship between the empirical classification error rates and the Mahalanobis distances of the respective class pairs of speech features is investigated, and based on this, a novel reformulation of the LDA criterion, distance-error coupled LDA (DE-LDA), is proposed. One notable characteristic of DE-LDA is that it can modulate the contribution on the between-class scatter from each class pair through the use of an empirical error function, while preserving the lightweight solvability of LDA. Experiment results seem to demonstrate that DE-LDA yields moderate improvements over LDA on the LVCSR task.
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