Authors
Pavel Senin, Jessica Lin, Xing Wang, Tim Oates, Sunil Gandhi, Arnold P Boedihardjo, Crystal Chen, Susan Frankenstein
Publication date
2018/2/13
Journal
ACM Transactions on Knowledge Discovery from Data (TKDD)
Volume
12
Issue
1
Pages
1-28
Publisher
ACM
Description
The problems of recurrent and anomalous pattern discovery in time series, e.g., motifs and discords, respectively, have received a lot of attention from researchers in the past decade. However, since the pattern search space is usually intractable, most existing detection algorithms require that the patterns have discriminative characteristics and have its length known in advance and provided as input, which is an unreasonable requirement for many real-world problems. In addition, patterns of similar structure, but of different lengths may co-exist in a time series. Addressing these issues, we have developed algorithms for variable-length time series pattern discovery that are based on symbolic discretization and grammar inference—two techniques whose combination enables the structured reduction of the search space and discovery of the candidate patterns in linear time. In this work, we present GrammarViz 3.0—a …
Total citations
201820192020202120222023202457111815134
Scholar articles
P Senin, J Lin, X Wang, T Oates, S Gandhi… - ACM Transactions on Knowledge Discovery from Data …, 2018