Novel semi-metrics for multivariate change point analysis and anomaly detection.

Clicks: 260
ID: 171571
2020
This paper proposes a new method for determining similarity and anomalies between time series, most practically effective in large collections of (likely related) time series, by measuring distances between structural breaks within such a collection. We introduce a class of distance measures, which we term . These semi-metrics provide an advantage over existing options such as the Hausdorff and Wasserstein metrics. We prove they have desirable properties, including better sensitivity to outliers, while experiments on simulated data demonstrate that they uncover similarity within collections of time series more effectively. Semi-metrics carry a potential disadvantage: without the triangle inequality, they may not satisfy a "transitivity property of closeness." We analyse this failure with proof and introduce an computational method to investigate, in which we demonstrate that our semi-metrics violate transitivity infrequently and mildly. Finally, we apply our methods to cryptocurrency and measles data, introducing a judicious application of eigenvalue analysis.
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james2020novelphysica Use this key to autocite in the manuscript while using SciMatic Manuscript Manager or Thesis Manager
Authors James, Nick;Menzies, Max;Azizi, Lamiae;Chan, Jennifer;
Journal physica d nonlinear phenomena
Year 2020
DOI 10.1016/j.physd.2020.132636
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