Comprehensive and efficient discovery of time series motifs

被引:0
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作者
Lian-hua Chi
He-hua Chi
Yu-cai Feng
Shu-liang Wang
Zhong-sheng Cao
机构
[1] Huazhong University of Science and Technology,School of Computer Science and Technology
[2] Wuhan University,State Key Laboratory of Software Engineering, Computer School
[3] Wuhan University,International School of Software
关键词
Time series motifs; Definition of ; -motifs; Optimized matrix structure; Fast pruning method; TP391.4;
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摘要
Time series motifs are previously unknown, frequently occurring patterns in time series or approximately repeated subsequences that are very similar to each other. There are two issues in time series motifs discovery, the deficiency of the definition of K-motifs given by Lin et al. (2002) and the large computation time for extracting motifs. In this paper, we propose a relatively comprehensive definition of K-motifs to obtain more valuable motifs. To minimize the computation time as much as possible, we extend the triangular inequality pruning method to avoid unnecessary operations and calculations, and propose an optimized matrix structure to produce the candidate motifs almost immediately. Results of two experiments on three time series datasets show that our motifs discovery algorithm is feasible and efficient.
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页码:1000 / 1009
页数:9
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