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A Novel Weighted Frequent Pattern-Based Outlier Detection Method Applied to Data Stream

机译:一种新的基于加权频繁模式的异口检测方法应用于数据流

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Against the problems that the weight value will seriously influence the result of outlier detection, this paper proposes a weighted frequent pattern-based outlier detection method called WFP-Outlier to discover the implicit outliers from the weighted data stream, where the WFP-Outlier method is conducted in two phases. In the weighted frequent pattern mining phase, we use the "pattern extension" operation to extend the "weighted frequent" k-patterns to (k+1)-patterns, and the maximal weight value is used in the mining process to improve the mining efficiency. In the outlier detection phase, based on the mined weighted frequent patterns, we defined two abnormal indexes named Weighted Frequent Pattern Abnormal Index (WFPAI) and Transaction Abnormal Index (TAI) to measure the abnormal degree of the detected transactions, and the transactions with small TAI values are judged as the abnormal transactions. The experimental results on a synthetic dataset show that the proposed WFP-Outlier method is suitable detecting the implicit outliers for the weighted data stream, and the detection efficiency is higher than that of FindFPOF method, OODFP method and LFP method.
机译:针对权重值将严重影响异常值检测结果的问题,提出了一种称为WFP-vistier的加权频繁模式的异口检测方法,以发现来自加权数据流的隐式异常值,其中WFP异常方法是用两阶段进行。在加权频繁模式挖掘阶段中,我们使用“图案延伸”操作将“加权频繁”k图案扩展到(k + 1)-patterns,并且最大重量值用于采矿过程以改善采矿效率。在异常值检测阶段,基于挖掘加权频繁模式,我们定义了两个名为加权频繁模式异常索引(WFPAI)和交易异常指数(TAI)的异常索引来测量检测到的事务的异常程度,以及与事务的交易泰价被判断为异常交易。合成数据集的实验结果表明,所提出的WFP-vercier方法是合适的检测加权数据流的隐式异常值,检测效率高于FindFPOF方法,OODFP方法和LFP方法的检测效率。

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