Feature Extraction and Selection via Robust Discriminant Analysis and Class Sparsity

A. Khoder, F. Dornaika
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引用次数: 1

Abstract

The main goal of discriminant embedding is to extract features that can be compact and informative representations of the original set of features. This paper introduces a hybrid scheme for linear feature extraction for supervised multiclass classification. We introduce a unifying criterion that is able to retain the advantages of robust sparse LDA and Interclass sparsity. Thus, the estimated transformation includes two types of discrimination which are the inter-class sparsity and robust Linear Discriminant Analysis with feature selection. In order to optimize the proposed objective function, we deploy an iterative alternating minimization scheme for estimating the linear transformation and the orthogonal matrix. The introduced scheme is generic in the sense that it can be used for combining and tuning many other linear embedding methods. In the lights of the experiments conducted on six image datasets including faces, objects, and digits, the proposed scheme was able to outperform competing methods in most of the cases.
基于鲁棒判别分析和类稀疏性的特征提取与选择
判别嵌入的主要目标是提取特征,这些特征可以是原始特征集的紧凑且信息丰富的表示。介绍了一种用于有监督多类分类的线性特征提取的混合方案。我们引入了一个统一的准则,能够保留鲁棒稀疏LDA和类间稀疏性的优点。因此,估计变换包括两种类型的判别:类间稀疏性和带特征选择的鲁棒线性判别分析。为了优化所提出的目标函数,我们采用迭代交替最小化方案来估计线性变换和正交矩阵。所介绍的方案具有通用性,可用于组合和调整许多其他线性嵌入方法。在包括人脸、物体和数字在内的6个图像数据集上进行的实验表明,该方案在大多数情况下都能够优于竞争方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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