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A Causal Approach for Mining Interesting Anomalies

机译:挖掘有趣异常的因果方法

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We propose a novel approach which combines the use of Bayesian network and probabilistic association rules to discover and explain anomalies in data. The Bayesian network allows us to organize information in order to capture both correlation and causality in the feature space, while the probabilistic association rules have a structure similar to association mining rules. In particular, we focus on two types of rules: (ⅰ) low support & high confidence and, (ⅱ) high support & low confidence. New data points which satisfy either one of the two rules conditioned on the Bayesian network are the candidate anomalies. We perform extensive experiments on well-known benchmark data sets and demonstrate that our approach is able to identify anomalies in high precision and recall. Moreover, our approach can be used to discover contextual information from the mined anomalies, which other techniques often fail to do so.
机译:我们提出了一种新颖的方法,该方法结合了贝叶斯网络和概率关联规则的使用来发现和解释数据中的异常。贝叶斯网络允许我们组织信息以捕获特征空间中的相关性和因果关系,而概率关联规则的结构类似于关联挖掘规则。特别是,我们关注两种类型的规则:(ⅰ)低支持度和高置信度,以及(ⅱ)高支持度和低置信度。满足贝叶斯网络条件的两个规则之一的新数据点是候选异常。我们对著名的基准数据集进行了广泛的实验,并证明了我们的方法能够以高精度和召回率识别异常。此外,我们的方法可用于从开采的异常中发现上下文信息,而其他技术通常无法做到这一点。

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