Contextual Time Series Change Detection

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Citation of Original Publication

Chen, Xi C., Karsten Steinhaeuser, Shyam Boriah, Snigdhansu Chatterjee, and Vipin Kumar. “Contextual Time Series Change Detection.” In Proceedings of the 2013 SIAM International Conference on Data Mining (SDM). Proceedings. Society for Industrial and Applied Mathematics, (2013): 501 - 511. https://doi.org/10.1137/1.9781611972832.56.

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Copyright © SIAM.

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Abstract

Time series data are common in a variety of fields ranging from economics to medicine and manufacturing. As a result, time series analysis and modeling has become an active research area in statistics and data mining. In this paper, we focus on a type of change we call contextual time series change (CTC) and propose a novel two-stage algorithm to address it. In contrast to traditional change detection methods, which consider each time series separately, CTC is defined as a change relative to the behavior of a group of related time series. As a result, our proposed method is able to identify novel types of changes not found by other algorithms. We demonstrate the unique capabilities of our approach with several case studies on real-world datasets from the financial and Earth science domains.