Litcius/Paper detail

TFAD

Chaoli Zhang, Tian Zhou, Qingsong Wen, Liang Sun

2022Proceedings of the 31st ACM International Conference on Information & Knowledge Management108 citationsDOIOpen Access PDF

Abstract

Time series anomaly detection is a challenging problem due to the complex temporal dependencies and the limited label data. Although some algorithms including both traditional and deep models have been proposed, most of them mainly focus on time-domain modeling, and do not fully utilize the information in the frequency domain of the time series data. In this paper, we propose a Time-Frequency analysis based time series Anomaly Detection model, or TFAD for short, to exploit both time and frequency domains for performance improvement. Besides, we incorporate time series decomposition and data augmentation mechanisms in the designed time-frequency architecture to further boost the abilities of performance and interpretability. Empirical studies on widely used benchmark datasets show that our approach obtains state-of-the-art performance in univariate and multivariate time series anomaly detection tasks.

Topics & Concepts

InterpretabilityComputer scienceBenchmark (surveying)Anomaly detectionTime seriesSeries (stratigraphy)Data miningUnivariateExploitAnomaly (physics)Code (set theory)Artificial intelligenceMultivariate statisticsMachine learningGeodesySet (abstract data type)GeographyPhysicsCondensed matter physicsPaleontologyProgramming languageComputer securityBiologyAnomaly Detection Techniques and ApplicationsTime Series Analysis and ForecastingNetwork Security and Intrusion Detection