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Castro et al., 2011 - Google Patents

Time series motifs statistical significance

Castro et al., 2011

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Document ID
10142261076335112655
Author
Castro N
Azevedo P
Publication year
Publication venue
Proceedings of the 2011 SIAM International Conference on Data Mining

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Time series motif discovery is the task of extracting previously unknown recurrent patterns from time series data. It is an important problem within applications that range from finance to health. Many algorithms have been proposed for the task of efficiently finding motifs …
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