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A Classification Framework for Anomaly Detection

机译:异常检测的分类框架

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One way to describe anomalies is by saying that anomalies are not concentrated. This leads to the problem of finding level sets for the data generating density. We interpret this learning problem as a binary classification problem and compare the corresponding classification risk with the standard performance measure for the density level problem. In particular it turns out that the empirical classification risk can serve as an empirical performance measure for the anomaly detection problem. This allows us to compare different anomaly detection algorithms empirically, i.e. with the help of a test set. Furthermore, by the above interpretation we can give a strong justification for the well-known heuristic of artificially sampling "labeled" samples, provided that the sampling plan is well chosen. In particular this enables us to propose a support vector machine (SVM) for anomaly detection for which we can easily establish universal consistency. Finally, we report some experiments which compare our SVM to other commonly used methods including the standard one-class SVM. color="gray">
机译:描述异常的一种方法是说异常不是集中的。这导致寻找用于数据生成密度的水平集的问题。我们将此学习问题解释为二元分类问题,并将相应的分类风险与密度水平问题的标准性能指标进行比较。特别地,事实证明,经验分类风险可以用作针对异常检测问题的经验性能度量。这使我们可以凭经验比较不同的异常检测算法,即借助测试集。此外,通过上述解释,我们可以为人为地对“带标签”样本进行人工采样的众所周知的启发式方法提供强有力的理由,前提是采样计划必须经过精心选择。特别是,这使我们能够提出用于异常检测的支持向量机(SVM),为此我们可以轻松地建立通用一致性。最后,我们报告了一些实验,这些实验将我们的SVM与其他常用方法进行了比较,包括标准的一类SVM。 color =“ gray”>

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