Authors
Yuan Li, Jessica Lin, Tim Oates
Publication date
2012/4/26
Book
Proceedings of the 2012 SIAM international conference on data mining
Pages
895-906
Publisher
Society for Industrial and Applied Mathematics
Description
The problem of time series motif discovery has received a lot of attention from researchers in the past decade. Most existing work on finding time series motifs require that the length of the motifs be known in advance. However, such information is not always available. In addition, motifs of different lengths may co-exist in a time series dataset. In this work, we develop a motif visualization system based on grammar induction. We demonstrate that grammar induction in time series can effectively identify repeated patterns without prior knowledge of their lengths. The motifs discovered by the visualization system are variable-lengths in two ways. Not only can the inter-motif subsequences have variable lengths, the intra-motif subsequences also are not restricted to have identical length—a unique property that is desirable, but has not been seen in the literature.
Total citations
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Scholar articles
Y Li, J Lin, T Oates - Proceedings of the 2012 SIAM international conference …, 2012