English

Optimal network online change point localisation

Statistics Theory 2021-01-15 v1 Machine Learning Statistics Theory

Abstract

We study the problem of online network change point detection. In this setting, a collection of independent Bernoulli networks is collected sequentially, and the underlying distributions change when a change point occurs. The goal is to detect the change point as quickly as possible, if it exists, subject to a constraint on the number or probability of false alarms. In this paper, on the detection delay, we establish a minimax lower bound and two upper bounds based on NP-hard algorithms and polynomial-time algorithms, i.e., \mboxdetectiondelay{log(1/α)max{r2/n,1}κ02nρ,log(Δ/α)max{r2/n,log(r)}κ02nρ,\mboxwithNPhardalgorithms,log(Δ/α)rκ02nρ,\mboxwithpolynomialtimealgorithms, \mbox{detection delay} \begin{cases} \gtrsim \log(1/\alpha) \frac{\max\{r^2/n, \, 1\}}{\kappa_0^2 n \rho},\\ \lesssim \log(\Delta/\alpha) \frac{\max\{r^2/n, \, \log(r)\}}{\kappa_0^2 n \rho}, & \mbox{with NP-hard algorithms},\\ \lesssim \log(\Delta/\alpha) \frac{r}{\kappa_0^2 n \rho}, & \mbox{with polynomial-time algorithms}, \end{cases} where κ0,n,ρ,r\kappa_0, n, \rho, r and α\alpha are the normalised jump size, network size, entrywise sparsity, rank sparsity and the overall Type-I error upper bound. All the model parameters are allowed to vary as Δ\Delta, the location of the change point, diverges. The polynomial-time algorithms are novel procedures that we propose in this paper, designed for quick detection under two different forms of Type-I error control. The first is based on controlling the overall probability of a false alarm when there are no change points, and the second is based on specifying a lower bound on the expected time of the first false alarm. Extensive experiments show that, under different scenarios and the aforementioned forms of Type-I error control, our proposed approaches outperform state-of-the-art methods.

Keywords

Cite

@article{arxiv.2101.05477,
  title  = {Optimal network online change point localisation},
  author = {Yi Yu and Oscar Hernan Madrid Padilla and Daren Wang and Alessandro Rinaldo},
  journal= {arXiv preprint arXiv:2101.05477},
  year   = {2021}
}
R2 v1 2026-06-23T22:09:13.599Z