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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >An efficient discriminant-based solution for small sample size problem
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An efficient discriminant-based solution for small sample size problem

机译:针对小样本量问题的基于判别的有效解决方案

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摘要

Classification of high-dimensional statistical data is usually not amenable to standard pattern recognition techniques because of an underlying small sample size problem. To address the problem of high-dimensional data classification in the face of a limited number of samples, a novel principal component analysis (PCA) based feature extraction/classification scheme is proposed. The proposed method yields a piecewise linear feature subspace and is particularly well-suited to difficult recognition problems where achievable classification rates are intrinsically low. Such problems are often encountered in cases where classes are highly overlapped, or in cases where a prominent Curvature in data renders a projection onto a single linear subspace inadequate. The proposed feature extraction/classification method uses class-dependent PCA in Conjunction With linear discriminant feature extraction and performs well on a variety of real-world datasets, ranging from digit recognition to classification of high-dimensional bioinformatics and brain imaging data.
机译:由于潜在的小样本量问题,高维统计数据的分类通常不适合标准模式识别技术。为了解决有限数量样本面对的高维数据分类问题,提出了一种新颖的基于主成分分析(PCA)的特征提取/分类方案。所提出的方法产生分段线性特征子空间,并且特别适合于可解决的分类率本质上较低的困难识别问题。在类高度重叠的情况下,或在数据中显着的曲率使单个线性子空间上的投影不充分的情况下,经常会遇到此类问题。所提出的特征提取/分类方法结合线性分类特征提取使用了与类相关的PCA,并在从数字识别到高维生物信息学和脑成像数据分类的各种现实世界数据集上都表现出色。

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