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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Parsimonious Mahalanobis kernel for the classification of high dimensional data
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Parsimonious Mahalanobis kernel for the classification of high dimensional data

机译:简化的Mahalanobis核用于高维数据分类

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摘要

The classification of high dimensional data with kernel methods is considered in this paper. Exploiting the emptiness property of high dimensional spaces, a kernel based on the Mahalanobis distance is proposed. The computation of the Mahalanobis distance requires the inversion of a covariance matrix. In high dimensional spaces, the estimated covariance matrix is ill-conditioned and its inversion is unstable or impossible. Using a parsimonious statistical model, namely the High Dimensional Discriminant Analysis model, the specific signal and noise subspaces are estimated for each considered class making the inverse of the class specific covariance matrix explicit and stable, leading to the definition of a parsimonious Mahalanobis kernel. A SVM based framework is used for selecting the hyperparameters of the parsimonious Mahalanobis kernel by optimizing the so-called radius-margin bound. Experimental results on three high dimensional data sets show that the proposed kernel is suitable for classifying high dimensional data, providing better classification accuracies than the conventional Gaussian kernel.
机译:本文考虑采用核方法对高维数据进行分类。利用高维空间的空性,提出了一种基于马氏距离的核。马氏距离的计算需要协方差矩阵的求逆。在高维空间中,估计的协方差矩阵条件不佳,其反演不稳定或不可能。使用简约统计模型(即高维判别分析模型),为每个考虑的类估计特定的信号和噪声子空间,从而使特定类协方差矩阵的逆矩阵显式且稳定,从而定义了简约的Mahalanobis核。基于SVM的框架用于通过优化所谓的“边距边界”来选择简约的Mahalanobis内核的超参数。在三个高维数据集上的实验结果表明,所提出的核适用于对高维数据进行分类,比常规的高斯核具有更好的分类精度。

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