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GeoStat Representations of Time Series for Fast Classification

Publication ,  Journal Article
Ravier, RJ; Soltani, M; Simões, M; Garagic, D; Tarokh, V
July 13, 2020

Recent advances in time series classification have largely focused on methods that either employ deep learning or utilize other machine learning models for feature extraction. Though successful, their power often comes at the requirement of computational complexity. In this paper, we introduce GeoStat representations for time series. GeoStat representations are based off of a generalization of recent methods for trajectory classification, and summarize the information of a time series in terms of comprehensive statistics of (possibly windowed) distributions of easy to compute differential geometric quantities, requiring no dynamic time warping. The features used are intuitive and require minimal parameter tuning. We perform an exhaustive evaluation of GeoStat on a number of real datasets, showing that simple KNN and SVM classifiers trained on these representations exhibit surprising performance relative to modern single model methods requiring significant computational power, achieving state of the art results in many cases. In particular, we show that this methodology achieves good performance on a challenging dataset involving the classification of fishing vessels, where our methods achieve good performance relative to the state of the art despite only having access to approximately two percent of the dataset used in training and evaluating this state of the art.

Duke Scholars

Publication Date

July 13, 2020
 

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Ravier, R. J., Soltani, M., Simões, M., Garagic, D., & Tarokh, V. (2020). GeoStat Representations of Time Series for Fast Classification.
Ravier, Robert J., Mohammadreza Soltani, Miguel Simões, Denis Garagic, and Vahid Tarokh. “GeoStat Representations of Time Series for Fast Classification,” July 13, 2020.
Ravier RJ, Soltani M, Simões M, Garagic D, Tarokh V. GeoStat Representations of Time Series for Fast Classification. 2020 Jul 13;
Ravier RJ, Soltani M, Simões M, Garagic D, Tarokh V. GeoStat Representations of Time Series for Fast Classification. 2020 Jul 13;

Publication Date

July 13, 2020