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Fast Anomaly Detection in Multiple Multi-Dimensional Data Streams

Authors :
Hongyu Sun
Timos Sellis
Qiang He
Kewen Liao
Longkun Guo
Feifei Chen
Jun Shen
Xuyun Zhang
Baru, C
Huan, J
Khan, L
Hu, XH
Ak, R
Tian, Y
Barga, R
Zaniolo, C
Lee, K
Ye, YF
Source :
IEEE BigData
Publication Year :
2019
Publisher :
IEEE, 2019.

Abstract

© 2019 IEEE. Multiple multi-dimensional data streams are ubiquitous in the modern world, such as IoT applications, GIS applications and social networks. Detecting anomalies in such data streams in real-time is an important and challenging task. It is able to provide valuable information from data and then assists decision-making. However, exiting approaches for anomaly detection in multi-dimensional data streams have not properly considered the correlations among multiple multi-dimensional streams. Moreover, for multi-dimensional streaming data, online detection speed is often an important concern. In this paper, we propose a fast yet effective anomaly detection approach in multiple multi-dimensional data streams. This is based on a combination of ideas, i.e., stream pre-processing, locality sensitive hashing and dynamic isolation forest. Experiments on real datasets demonstrate that our approach achieves a magnitude increase in its efficiency compared with state-of-the-art approaches while maintaining competitive detection accuracy.

Details

Language :
English
Database :
OpenAIRE
Journal :
IEEE BigData
Accession number :
edsair.doi.dedup.....44b03a8fa2bb3b5a46a7cbec202012da