Local Discriminant Analysis

M. Loog, D. Ridder
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引用次数: 10

Abstract

The main objective of the work presented here is to introduce a supervised, nonlinear dimensionality reduction technique which performs well-known linear discriminant analysis in a local way and which is able to provide a powerful mapping with less computational effort than other nonlinear reduction methods. Additionally, because of the close connection of the new approach to Fisher's LDA, it is more clear that it acts discriminatively, which is not immediately apparent from previous formulations. The method makes use of the optimal scoring framework advocated by Hastie et al. and it is coined local discriminant analysis (lDA)
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局部判别分析
这里提出的工作的主要目的是引入一种监督的非线性降维技术,该技术以局部方式执行众所周知的线性判别分析,并且能够以比其他非线性降维方法更少的计算量提供强大的映射。此外,由于新方法与费雪LDA的密切联系,更清楚的是,它的作用是有区别的,这从以前的公式中并不立即明显。该方法利用了Hastie等人提出的最优评分框架,并将其命名为局部判别分析(lDA)。
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