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Subclass Graph Embedding and a Marginal Fisher Analysis paradigm

机译:子类图嵌入和边际Fisher分析范式

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摘要

Subspace learning techniques have been extensively used for dimensionality reduction (DR) in many pattern classification problem domains. Recently, methods like Subclass Discriminant Analysis (SDA) and Clustering-based Discriminant Analysis (CDA), which use subclass information for the discrimination between the data classes, have attracted much attention. In parallel, important work has been accomplished on Graph Embedding (GE), which is a general framework unifying several subspace learning techniques. In this paper, GE has been extended in order to integrate subclass discriminant information resulting to the novel Subclass Graph Embedding (SGE) framework, which is the main contribution of our work. It is proven that SGE encapsulates a diversity of both supervised and unsupervised unimodal methods like Locality Preserving Projections (LPP), Principal Component Analysis (PCA) and Linear Discriminant Analysis (LDA). The theoretical link of SDA and CDA methods with SGE is also established. Along these lines, it is shown that SGE comprises a generalization of the typical GE framework including subclass DR methods. Moreover, it allows for an easy utilization of kernels for confronting non-linearly separable data. Employing SGE, in this paper a novel DR algorithm, which uses subclass discriminant information, called Subclass Marginal Fisher Analysis (SMFA) has been proposed. Through a series of experiments on various real-world datasets, it is shown that SMFA outperforms in most of the cases the state-of-the-art demonstrating the efficacy and power of SGE as a platform to develop new methods. (C) 2015 Elsevier Ltd. All rights reserved.
机译:子空间学习技术已被广泛用于许多模式分类问题域中的降维(DR)。最近,诸如子类判别分析(SDA)和基于聚类的判别分析(CDA)之类的方法将子类信息用于数据类之间的区分,这些方法引起了人们的广泛关注。同时,关于图形嵌入(GE)的重要工作已经完成,这是一个统一了几种子空间学习技术的通用框架。在本文中,对GE进行了扩展,以将产生的子类判别信息集成到新颖的子类图嵌入(SGE)框架中,这是我们工作的主要贡献。事实证明,SGE封装了监督和非监督单峰方法的多样性,例如局部性保留投影(LPP),主成分分析(PCA)和线性判别分析(LDA)。还建立了SDA和CDA方法与SGE的理论联系。沿着这些思路,表明SGE包含了典型GE框架的概括,包括子类DR方法。此外,它允许轻松利用内核来处理非线性可分离数据。利用SGE,提出了一种使用子类判别信息的新颖的DR算法,称为子类边际费舍尔分析(SMFA)。通过在各种实际数据集上进行的一系列实验,表明SMFA在大多数情况下均优于最新技术,这证明了SGE作为开发新方法的平台的功效和力量。 (C)2015 Elsevier Ltd.保留所有权利。

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