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Revisiting Attribute Independence Assumption in Probabilistic Unsupervised Anomaly Detection

机译:再探概率无监督异常检测中的属性独立性假设

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In this paper, we revisit the simple probabilistic approach of unsupervised anomaly detection by estimating multivariate probability as a product of univariate probabilities, assuming attributes are generated independently. We show that this simple traditional approach performs competitively to or better than five state-of-the-art unsupervised anomaly detection methods across a wide range of data sets from categorical, numeric or mixed domains. It is arguably the fastest anomaly detector. It is one order of magnitude faster than the fastest state-of-the-art method in high dimensional data sets.
机译:在本文中,我们假设属性是独立生成的,我们通过将多元概率估计为单变量概率的乘积,来重新研究无监督异常检测的简单概率方法。我们表明,这种简单的传统方法在分类,数字或混合域的广泛数据集上的性能优于或优于五种最新的无监督异常检测方法。它可以说是最快的异常检测器。它比高维数据集中最快的最新方法快一个数量级。

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