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TSAGen: Synthetic Time Series Generation for KPI Anomaly Detection

Chengyu Wang, Kui Wu, Tongqing Zhou, Guang Yu, Zhiping Cai

2021IEEE Transactions on Network and Service Management38 citationsDOI

Abstract

A key performance indicator (KPI) consists of critical time series data that reflect the runtime states of network systems (e.g., response time and available bandwidth). Despite the importance of KPI, datasets for KPI anomaly detection available to the public are very limited, due to privacy concerns and the high overhead in manually labelling the data. The insufficiency of public KPI data poses a great barrier for network researchers and practitioners to evaluate and test what-if scenarios in the development of artificial intelligence for IT operations (AIOps) and anomaly detection algorithms. To tackle the difficulty, we develop a univariate time series generation tool called TSAGen, which can generate KPI data with anomalies and controllable characteristics for KPI anomaly detection. Experiment results show that the data generated by TSAGen can be used for comprehensive evaluation of anomaly detection algorithms with diverse user-defined what-if scenarios.

Topics & Concepts

Anomaly detectionComputer scienceData miningPerformance indicatorTime seriesAnomaly (physics)Series (stratigraphy)Overhead (engineering)Machine learningCondensed matter physicsManagementBiologyEconomicsOperating systemPaleontologyPhysicsAnomaly Detection Techniques and ApplicationsTime Series Analysis and ForecastingNetwork Security and Intrusion Detection