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Equivalence of Several Two-stage Methods for Linear Discriminant Analysis

机译:线性判别分析几种两级方法的等价性

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Linear discriminant analysis (LDA) has been used for decades to extract features that preserve class separability. It is classically defined as an optimization problem involving covariance matrices that represent the scatter within and between clusters. The requirement that one of these matrices be nonsingular restricts its application to data sets in which the dimension of the data does not exceed the sample size. Recently, the applicability of LDA has been extended by using the generalized singular value decomposition (GSVD) to circumvent the nonsingularity requirement. Alternatively, many studies have taken a two-stage approach in which the first stage reduces the dimension of the data enough so that it can be followed by classical LDA. In this paper, we justify the two-stage approach by establishing its equivalence to the single-stage LDA/GSVD method, provided either principal component analysis or latent semantic indexing is used in the first stage over a certain range of intermediate dimensions. We also present a computationally simpler choice for the first stage, and conclude with a discussion of the relative merits of each approach.
机译:线性判别分析(LDA)已被使用数十年来提取保存阶级可分离性的功能。它经典被定义为涉及代表群集内和之间分散的协方差矩阵的优化问题。这些矩阵中的一个要求将其应用于数据集的应用程序,其中数据的维度不超过样本大小。最近,通过使用广泛的奇异值分解(GSVD)来避免无烟性要求,LDA的适用性已经扩展。或者,许多研究已经采取了两级方法,其中第一阶段足以减少数据的维度,以便它可以跟随经典LDA。在本文中,我们通过将其等效性建立到单阶段LDA / GSVD方法来证明两级方法,提供了主成分分析或潜在语义索引在一定范围内的中间尺寸范围内。我们还为第一阶段提出了一种计算方式,并结束了对每个方法的相对优点的讨论。

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