Multilayer perceptron based dimensionality reduction

R. Lotlikar, R. Kothari
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引用次数: 1

Abstract

Dimensionality reduction is the process of mapping high dimensional patterns to a lower dimensional manifold and is typically used for visualization or as a preprocessing step in classification applications. From a classification viewpoint, the rate of increase of Bayes error serves as an ideal choice to measure the loss of information relevant to classification. Motivated by that, we present a multilayer perceptron which produces as output the lower dimensional representation. The multilayer perceptron is trained so as to minimize the classification error in the subspace. It thus differs from autoassociative like multilayer perceptrons which have been proposed and used for dimensionality reduction. We examine the performance of the proposed method of dimensionality reduction and the effect that varying the parameters have on the algorithm.
基于多层感知器的降维
降维是将高维模式映射到低维流形的过程,通常用于可视化或作为分类应用程序中的预处理步骤。从分类的角度来看,贝叶斯误差的增长率是衡量分类相关信息损失的理想选择。基于此,我们提出了一种多层感知器,该感知器输出低维表示。对多层感知器进行训练,使子空间中的分类误差最小化。因此,它不同于自关联的多层感知器,这些感知器已被提出并用于降维。我们检验了所提出的降维方法的性能以及参数变化对算法的影响。
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