期刊文献+
共找到1篇文章
< 1 >
每页显示 20 50 100
FAAD:an unsupervised fast and accurate anomaly detection method for a multi-dimensional sequence over data stream 被引量:1
1
作者 Bin LI Yi-jie WANG +2 位作者 Dong-sheng YANG Yong-mou LI xing-kong ma 《Frontiers of Information Technology & Electronic Engineering》 SCIE EI CSCD 2019年第3期388-404,共17页
Recently, sequence anomaly detection has been widely used in many fields. Sequence data in these fields are usually multi-dimensional over the data stream. It is a challenge to design an anomaly detection method for a... Recently, sequence anomaly detection has been widely used in many fields. Sequence data in these fields are usually multi-dimensional over the data stream. It is a challenge to design an anomaly detection method for a multi-dimensional sequence over the data stream to satisfy the requirements of accuracy and high speed. It is because:(1) Redundant dimensions in sequence data and large state space lead to a poor ability for sequence modeling;(2) Anomaly detection cannot adapt to the high-speed nature of the data stream, especially when concept drift occurs, and it will reduce the detection rate. On one hand, most existing methods of sequence anomaly detection focus on the single-dimension sequence. On the other hand, some studies concerning multi-dimensional sequence concentrate mainly on the static database rather than the data stream. To improve the performance of anomaly detection for a multi-dimensional sequence over the data stream, we propose a novel unsupervised fast and accurate anomaly detection(FAAD) method which includes three algorithms. First, a method called "information calculation and minimum spanning tree cluster" is adopted to reduce redundant dimensions. Second, to speed up model construction and ensure the detection rate for the sequence over the data stream, we propose a method called"random sampling and subsequence partitioning based on the index probabilistic suffix tree." Last, the method called "anomaly buffer based on model dynamic adjustment" dramatically reduces the effects of concept drift in the data stream. FAAD is implemented on the streaming platform Storm to detect multi-dimensional log audit data.Compared with the existing anomaly detection methods, FAAD has a good performance in detection rate and speed without being affected by concept drift. 展开更多
关键词 Data STREAM MULTI-DIMENSIONAL SEQUENCE ANOMALY detection Concept DRIFT Feature selection
原文传递
上一页 1 下一页 到第
使用帮助 返回顶部