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Outlier Resistant PCA Ensembles

机译:抗离群的PCA集成

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摘要

Statistical re-sampling techniques have been used extensively and successfully in the machine learning approaches for generation of classifier and predictor ensembles. It has been frequently shown that combining so called unstable predictors has a stabilizing effect on and improves the performance of the prediction system generated in this way. In this paper we use the resampling techniques in the context of Principal Component Analysis (PCA). We show that the proposed PCA ensembles exhibit a much more robust behaviour in the presence of outliers which can seriously affect the performance of an individual PCA algorithm. The performance and characteristics of the proposed approaches are illustrated on a number of experimental studies where an individual PCA is compared to the introduced PCA ensemble.
机译:统计重采样技术已在机器学习方法中广泛且成功地用于生成分类器和预测器集合。经常显示出,组合所谓的不稳定预测变量对以这种方式生成的预测系统具有稳定作用并提高其性能。在本文中,我们在主成分分析(PCA)的背景下使用重采样技术。我们表明,提出的PCA集合在异常值的存在下表现出更强健的行为,这会严重影响单个PCA算法的性能。在许多实验研究中说明了所提出方法的性能和特性,其中将单个PCA与引入的PCA集合进行了比较。

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