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A Note On Two-dimensional Linear Discriminant Analysis

机译:关于二维线性判别分析的一个注记

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2DLDA and its variants have attracted much attention from researchers recently due to the advantages over the singularity problem and the computational cost. In this paper, we further analyze the 2DLDA method and derive the upper bound of its criterion. Based on this upper bound, we show that the discriminant power of two-dimensional discriminant analysis is not stronger than that of LDA under the assumption that the same dimensionality is considered. In experimental parts, on one hand, we confirm the validity of our claim and show the matrix-based methods are not always better than vector-based methods in the small sample size problem; on the other hand, we compare several distance measures when the feature matrices and feature vectors are applied. The matlab codes used in this paper are available at http://www.mathworks.com/matlabcentral/fileexchange/loadCategory.do?objectType=category& objectld=127&objectName=Application.
机译:由于2DLDA及其变体相对于奇点问题和计算成本的优势,最近引起了研究人员的广泛关注。在本文中,我们将进一步分析2DLDA方法,并推导其标准的上限。基于此上限,我们表明在考虑相同维数的前提下,二维判别分析的判别能力不比LDA强。在实验部分,一方面,我们确认了我们的主张的有效性,并表明在小样本量问题中,基于矩阵的方法并不总是比基于矢量的方法更好。另一方面,我们比较了应用特征矩阵和特征向量时的几种距离度量。本文使用的Matlab代码可从http://www.mathworks.com/matlabcentral/fileexchange/loadCategory.do?objectType=category&objectld=127&objectName=Application获得。

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