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A User Behavior Anomaly Detection Approach Based on Sequence Mining over Data Streams

机译:基于数据流序列挖掘的用户行为异常检测方法

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How to design a low-latency and accurate approach for user behavior anomaly detection over data streams has become a great challenge. However, existing studies cannot meet low-latency and accurate requirements, due to a large number of subsequences and sequential relationship in behaviors. This paper presents BADSM, a user behavior anomaly detection approach based on sequence mining over data streams that seeks to address such challenge. BADSM uses self-adaptive behavior pruning algorithm to adaptively divide data stream into behaviors and decrease the number of subsequences to improve the efficiency of sequence mining. Meanwhile, the top-k abnormal scoring algorithm is used to reduce the complexity of traversal and obtain quantitative detection result to improve accuracy. We design and implement a streaming anomaly detection system based on BADSM to perform online detection. Extensive experiments confirm that BADSM significantly reduces processing delay by at least 36.8% and false positive rate by 6.4% compared with the classic sequence mining approach PrefixSpan.
机译:如何设计一种低延迟和准确的方法来检测数据流中的用户行为异常已成为一个巨大的挑战。但是,由于行为中存在大量子序列和顺序关系,因此现有研究无法满足低延迟和准确的要求。本文提出了BADSM,这是一种基于对数据流进行序列挖掘的用户行为异常检测方法,旨在解决此类挑战。 BADSM使用自适应行为修剪算法将数据流自适应地划分为行为,并减少子序列的数量,以提高序列挖掘的效率。同时,使用top-k异常评分算法来降低遍历的复杂度,并获得定量的检测结果,以提高准确性。我们设计并实现了基于BADSM的流异常检测系统,以进行在线检测。大量实验证实,与经典序列挖掘方法PrefixSpan相比,BADSM显着减少了至少36.8 \%的处理延迟和6.4%的误报率。

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