Multiple time series anomaly detection based on compression and correlation analysis: a medical surveillance case study
conference contribution
posted on 2012-04-18, 00:00 authored by Z Qiao, J He, J Cao, Guangyan HuangGuangyan Huang, P ZhangIn this paper, we present a novel anomaly detection framework for multiple heterogeneous yet correlated time series, such as the medical surveillance series data. In our framework, we propose an anomaly detection algorithm from the viewpoint of trend and correlation analysis. Moreover, to efficiently process huge amount of observed time series, a new clustering-based compression method is proposed. Experimental results indicate that our framework is more effective and efficient than its peers. © 2012 Springer-Verlag Berlin Heidelberg.
History
Volume
7235Pagination
294-305Location
Kunming, ChinaStart date
2012-04-11End date
2012-04-13ISSN
0302-9743eISSN
1611-3349ISBN-13
9783642292538Language
engPublication classification
E Conference publication, E1.1 Full written paper - refereedCopyright notice
2012, SpringerEditor/Contributor(s)
Zheng QZ, Wang G, Jensen CS, Xu GTitle of proceedings
14th Asia-Pacific Web Conference, APWeb 2012, Kunming, China, April 11-13, 2012. ProceedingsEvent
Asia Pacific Web Technology Conference (14th : 2012 : Kunming, China)Publisher
SpringerPlace of publication
Berlin, GermanySeries
Lecture Notes in Computer ScienceUsage metrics
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