Nonlinear data description with Principal Polynomial Analysis

Valero Laparra, D. Tuia, S. Jiménez, Gustau Camps-Valls, J. Malo
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引用次数: 10

Abstract

Principal Component Analysis (PCA) has been widely used for manifold description and dimensionality reduction. Performance of PCA is however hampered when data exhibits nonlinear feature relations. In this work, we propose a new framework for manifold learning based on the use of a sequence of Principal Polynomials that capture the eventually nonlinear nature of the data. The proposed Principal Polynomial Analysis (PPA) is shown to generalize PCA. Unlike recently proposed nonlinear methods (e.g. spectral/kernel methods and projection pursuit techniques, neural networks), PPA features are easily interpretable and the method leads to a fully invertible transform, which is a desirable property to evaluate performance in dimensionality reduction. Successful performance of the proposed PPA is illustrated in dimensionality reduction, in compact representation of non-Gaussian image textures, and multispectral image classification.
基于主多项式分析的非线性数据描述
主成分分析(PCA)在流形描述和降维中得到了广泛的应用。然而,当数据表现出非线性特征关系时,主成分分析的性能受到阻碍。在这项工作中,我们提出了一个新的流形学习框架,该框架基于使用主多项式序列来捕获数据的最终非线性性质。提出的主多项式分析(PPA)可以推广主成分分析。与最近提出的非线性方法(如谱/核方法和投影追踪技术,神经网络)不同,PPA特征易于解释,并且该方法导致完全可逆变换,这是评估降维性能的理想性质。所提出的PPA在降维、非高斯图像纹理的紧凑表示和多光谱图像分类方面取得了成功。
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