Theseus

Author:

Boniol Paul1,Paparrizos John2,Kang Yuhao3,Palpanas Themis4,Tsay Ruey S.3,Elmore Aaron J.3,Franklin Michael J.3

Affiliation:

1. Université Paris Cité

2. The Ohio State University

3. University of Chicago

4. Université Paris Cité & IUF

Abstract

The detection of anomalies in time series has gained ample academic and industrial attention, yet, no comprehensive benchmark exists to evaluate time-series anomaly detection methods. Therefore, there is no final verdict on which method performs the best (and under what conditions). Consequently, we often observe methods performing exceptionally well on one dataset but surprisingly poorly on another, creating an illusion of progress. To address these issues, we thoroughly studied over one hundred papers, and summarized our effort in TSB-UAD, a new benchmark to evaluate univariate time series anomaly detection methods. In this paper, we describe Theseus, a modular and extensible web application that helps users navigate through the benchmark, and reason about the merits and drawbacks of both anomaly detection methods and accuracy measures, under different conditions. Overall, our system enables users to compare 12 anomaly detection methods on 1980 time series, using 13 accuracy measures, and decide on the most suitable method and measure for some application.

Publisher

Association for Computing Machinery (ACM)

Subject

General Earth and Planetary Sciences,Water Science and Technology,Geography, Planning and Development

Reference39 articles.

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3. k-ShapeStream: Probabilistic Streaming Clustering for Electric Grid Events

4. A. Blázquez-García , A. Conde , U. Mori , and J. A. Lozano . A review on outlier/anomaly detection in time series data. ACM Comput. Surv., 54(3), apr 2021 . A. Blázquez-García, A. Conde, U. Mori, and J. A. Lozano. A review on outlier/anomaly detection in time series data. ACM Comput. Surv., 54(3), apr 2021.

5. P. Boniol , M. Linardi , F. Roncallo , T. Palpanas , M. Meftah , and E. Remy . Unsupervised and scalable subsequence anomaly detection in large data series . VLDBJ , 2021 . P. Boniol, M. Linardi, F. Roncallo, T. Palpanas, M. Meftah, and E. Remy. Unsupervised and scalable subsequence anomaly detection in large data series. VLDBJ, 2021.

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