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A Similar Distribution Discriminant Analysis with Orthogonal and Nearly Statistically Uncorrelated Characteristics

机译:具有正交和几乎统计学不相关特征的类似分布判别分析

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摘要

It is very difficult to process and analyze high-dimensional data directly. Therefore, it is necessary to learn a potential subspace of high-dimensional data through excellent dimensionality reduction algorithms to preserve the intrinsic structure of high-dimensional data and abandon the less useful information. Principal component analysis (PCA) and linear discriminant analysis (LDA) are two popular dimensionality reduction methods for high-dimensional sensor data preprocessing. LDA contains two basic methods, namely, classic linear discriminant analysis and FS linear discriminant analysis. In this paper, a new method, called similar distribution discriminant analysis (SDDA), is proposed based on the similarity of samples' distribution. Furthermore, the method of solving the optimal discriminant vector is given. These discriminant vectors are orthogonal and nearly statistically uncorrelated. The disadvantages of PCA and LDA are overcome, and the extracted features are more effective by using SDDA. The recognition performance of SDDA exceeds PCA and LDA largely. Some experiments on the Yale face database, FERET face database, and UCI multiple features dataset demonstrate that the proposed method is effective. The results reveal that SDDA obtains better performance than comparison dimensionality reduction methods.
机译:非常困难直接处理和分析高维数据。因此,有必要通过优异的维度减少算法来学习高维数据的潜在子空间,以保持高维数据的内在结构并放弃更少的有用信息。主成分分析(PCA)和线性判别分析(LDA)是用于高维传感器数据预处理的两个流行的维度减少方法。 LDA含有两种基本方法,即经典线性判别分析和FS线性判别分析。本文基于样本分布的相似性提出了一种称为类似分布判别分析(SDDA)的新方法。此外,给出了求解最佳判别载体的方法。这些判别载体正交,几乎统计学不相关。克服了PCA和LDA的缺点,通过使用SDDA,提取的特征更有效。 SDDA的识别性能主要超过PCA和LDA。关于耶鲁脸部数据库,Feret面部数据库和UCI多个特征数据集的一些实验证明了所提出的方法是有效的。结果表明,SDDA比比较维数减少方法获得更好的性能。

著录项

  • 来源
    《Mathematical Problems in Engineering》 |2019年第21期|3145973.1-3145973.10|共10页
  • 作者

    Guo Zhibo; Zhang Ying;

  • 作者单位

    Yangzhou Univ Coll Informat Engn Yangzhou 225009 Jiangsu Peoples R China;

    Yangzhou Univ Coll Informat Engn Yangzhou 225009 Jiangsu Peoples R China;

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  • 正文语种 eng
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