Title of article
Time Series Motif Discovery and Anomaly Detection Based on Subseries Join
Author/Authors
Yi Lin، نويسنده , , Wolfgang Sturzlinger and Michael D. McCool، نويسنده , , and Ali A. Ghorbani، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2010
Pages
13
From page
1
To page
13
Abstract
Time series are composed of sequences of data items measured at typically uniform intervals. Time series arise frequently in many scientific and engineering applications, including finance, medicine, digital audio, and motion capture. Time series motifs are repeated similar subseries in one or multiple time series data. Time series anomalies are unusual subseries in one or multiple time series data. Finding motifs and anomalies in time series data are closely related problems and are useful in many domains, including medicine, motion capture, meteorology, and finance. This paper presents a novel approach for both the motif discovery problem and the anomaly detection problem. First, we use a subseries join operation to match similar subseries and to obtain similarity relationships among subseries of the time series data. The subseries join algorithm we use can efficiently and effectively tolerate noise, time-scaling, and phase shifts. Based on the similarity relationships found among subseries of the time series data, the motif discovery and anomaly detection problems can be converted to graph-theoretic problems solvable by known graph- theoretic algorithms. Experiments demonstrate the effectiveness of the proposed approach to discover motifs and anomalies in real-world time series data. Experiments also demonstrate that the proposed approach is efficient when applied to large time series datasets.
Keywords
Pattern recognition , Motif discovery , Anomaly detection , time series , subseries join , graph-theoretic algorithm
Journal title
IAENG International Journal of Computer Science
Serial Year
2010
Journal title
IAENG International Journal of Computer Science
Record number
660342
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