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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Sign consistency for the linear programming discriminant rule
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Sign consistency for the linear programming discriminant rule

机译:符号为线性规划判别规则的一致性

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摘要

Linear discriminant analysis (LDA) is an important conventional model for data classification. Classical theory shows that LDA is Bayes consistent for a fixed data dimensionality p and a large training sample size n. However, in high-dimensional settings when p n, LDA is difficult due to the inconsistent estimation of the covariance matrix and the mean vectors of populations. Recently, a linear programming discriminant (LPD) rule was proposed for high-dimensional linear discriminant analysis, based on the sparsity assumption over the discriminant function. It is shown that the LPD rule is Bayes consistent in high-dimensional settings. In this paper, we further show that the LPD rule is sign consistent under the sparsity assumption. Such sign consistency ensures the LPD rule to select the optimal discriminative features for high-dimensional data classification problems. Evaluations on both synthetic and real data validate our result on the sign consistency of the LPD rule. (C) 2019 Elsevier Ltd. All rights reserved.
机译:线性判别分析(LDA)是数据分类的重要常规模型。经典理论表明,LDA是贝叶斯,对于固定数据维度P以及大型训练样本尺寸n一致。然而,在高维设置时,当P N时,由于协方差矩阵的估计和群体的平均载体,LDA难以困难。最近,提出了一种基于判别函数对稀疏假设的高维线性判别分析的线性规划判别(LPD)规则。结果表明,LPD规则是在高维设置中一致的贝叶斯。在本文中,我们进一步表明LPD规则是稀疏假设下的标志。此类标志一致性可确保LPD规则选择用于高维数据分类问题的最佳辨别特征。对合成和实际数据的评估验证了我们对LPD规则的标志一致性的结果。 (c)2019年elestvier有限公司保留所有权利。

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