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The all-pairs-similarity-search (or similarity join) problem has been extensively studied for text and a handful of other datatypes. However, surprisingly little progress has been made on similarity joins for time series subsequences. The lack of progress probably stems from the daunting nature of the problem. For even modest sized datasets the obvious nested-loop algorithm can take months, and the typical speed-up techniques in this domain (i.e., indexing, lower-bounding, triangular-inequality pruning and early abandoning) at best produce one or two orders of magnitude speedup. In this work we introduce a novel scalable algorithm for time series subsequence all-pairs-similarity-search. For exceptionally large datasets, the algorithm can be trivially cast as an anytime algorithm and produce high-quality approximate solutions in reasonable time. The exact similarity join algorithm computes the answer to the time series motif and time series discord problem as a side-effect, and our algorithm incidentally provides the fastest known algorithm for both these extensively-studied problems. We demonstrate the utility of our ideas for two time series data mining problems, including motif discovery and novelty discovery.
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Chin‐Chia Michael Yeh
Visa (United Kingdom)
Yan Zhu
Nanjing University of Chinese Medicine
Liudmila Ulanova
University of California, Riverside
Universidade de São Paulo
University of California System
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Yeh et al. (Thu,) studied this question.
synapsesocial.com/papers/69d9d4230d540cafc583788a — DOI: https://doi.org/10.1109/icdm.2016.0179