基于双峰投影特征的统一编码和分类方法

Dipti Deodhare, M. Vidyasagar, M. Murty
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引用次数: 1

摘要

通常情况下,对输入数据进行准确编码的目标与提取好的特征便于分类的目标是不一致的。因此,好的编码方法可能不是有效的分类机制。本文将先前提出的一种用于模式分类的无监督特征提取机制进行了扩展,得到了一种可逆映射。基于双峰投影的特征提取方法的灵感来自于一种称为投影寻踪的通用方法。投影追求的原则集中在区分集群和非忠实表征的投影上。针对这一问题,对双峰投影法得到的基本特征图进行了扩展。扩展特征映射是输入空间在特征空间中的嵌入。因此,存在逆映射,因此输入空间在特征空间中的表示是精确的。这个图可以很自然地表示为一个前馈神经网络
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Unified Approach to Encoding and Classification Using Bimodal Projection-Based Features
In general the objective of accurately encoding the input data and the objective of extracting good features to facilitate classification are not consistent with each other. As a result, good encoding methods may not be effective mechanisms for classification. In this paper, an earlier proposed unsupervised feature extraction mechanism for pattern classification has been extended to obtain an invertible map. The method of bimodal projection-based features was inspired by the general class of methods called projection pursuit. The principle of projection pursuit concentrates on projections that discriminate between clusters and not faithful representations. The basic feature map obtained by the method of bimodal projections has been extended to overcome this. The extended feature map is an embedding of the input space in the feature space. As a result, the inverse map exists and hence the representation of the input space in the feature space is exact. This map can be naturally expressed as a feedforward neural network
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