Random projections and Hotelling’s T2 statistics for change detection in high-dimensional data streams

E. Skubalska-Rafajlowicz
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引用次数: 12

Abstract

The method of change (or anomaly) detection in high-dimensional discrete-time processes using a multivariate Hotelling chart is presented. We use normal random projections as a method of dimensionality reduction. We indicate diagnostic properties of the Hotelling control chart applied to data projected onto a random subspace of Rn. We examine the random projection method using artificial noisy image sequences as examples.
用于高维数据流变化检测的随机预测和Hotelling的T2统计
提出了一种利用多元霍特林图检测高维离散过程变化(或异常)的方法。我们使用正态随机投影作为降维方法。我们指出了将Hotelling控制图应用于投影到Rn的随机子空间上的数据的诊断性质。以人工噪声图像序列为例,研究了随机投影方法。
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