IEEE Open Journal of Control Systems (Jan 2024)

Model-Free Change Point Detection for Mixing Processes

  • Hao Chen,
  • Abhishek Gupta,
  • Yin Sun,
  • Ness Shroff

DOI
https://doi.org/10.1109/OJCSYS.2024.3398530
Journal volume & issue
Vol. 3
pp. 202 – 213

Abstract

Read online

This paper considers the change point detection problem under dependent samples. In particular, we provide performance guarantees for the MMD-CUSUM test under exponentially $\alpha$, $\beta$, and fast $\phi$-mixing processes, which significantly expands its utility beyond the i.i.d. and Markovian cases used in previous studies. We obtain lower bounds for average-run-length ($ {\mathtt {ARL}}$) and upper bounds for average-detection-delay ($ {\mathtt {ADD}}$) in terms of the threshold parameter. We show that the MMD-CUSUM test enjoys the same level of performance as the i.i.d. case under fast $\phi$-mixing processes. The MMD-CUSUM test also achieves strong performance under exponentially $\alpha$/$\beta$-mixing processes, which are significantly more relaxed than existing results. The MMD-CUSUM test statistic adapts to different settings without modifications, rendering it a completely data-driven, dependence-agnostic change point detection scheme. Numerical simulations are provided at the end to evaluate our findings.

Keywords