Assessing Feature Representations for Instance-Based Cross-Domain Anomaly Detection in Cloud Services Univariate Time Series Data

Rahul Agrahari, Matthew Nicholson, Clare Conran, Haytham Assem, John D. Kelleher

Research output: Contribution to journalArticlepeer-review

5 Citations (Scopus)

Abstract

In this paper, we compare and assess the efficacy of a number of time-series instance feature representations for anomaly detection. To assess whether there are statistically significant differences between different feature representations for anomaly detection in a time series, we calculate and compare confidence intervals on the average performance of different feature sets across a number of different model types and cross-domain time-series datasets. Our results indicate that the catch22 time-series feature set augmented with features based on rolling mean and variance performs best on average, and that the difference in performance between this feature set and the next best feature set is statistically significant. Furthermore, our analysis of the features used by the most successful model indicates that features related to mean and variance are the most informative for anomaly detection. We also find that features based on model forecast errors are useful for anomaly detection for some but not all datasets.

Original languageEnglish
Pages (from-to)123-144
Number of pages22
JournalInternet of Things
Volume3
Issue number1
DOIs
Publication statusPublished - Mar 2022

Keywords

  • AIOPS
  • anomaly detection
  • cloud monitoring
  • data representation
  • time series analysis

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