多层随机点积图:估计与在线变点检测

Multilayer random dot product graphs: estimation and online change point detection

Journal of the Royal Statistical Society. Series B: Statistical Methodology · 2025
被引 1
ABS 4

中文导读

研究了多层随机点积图模型,提出基于张量的边概率估计方法,并设计了在线变点检测框架,在固定和随机潜在位置下均能最小化检测延迟并控制误报。

Abstract

Abstract We study the multilayer random dot product graph (MRDPG) model, a generalization of the random dot product graph model to multilayer networks. To estimate the edge probabilities, we deploy a tensor-based methodology and demonstrate its superiority over existing approaches. Moving to dynamic MRDPGs, we formulate and analyse an online change point detection framework, where, at each time point, we observe a realization from an MRDPG. Across layers, we assume fixed shared common node sets and latent positions, but allow for different connectivity matrices. We propose efficient tensor algorithms that, under both fixed and random latent position scenarios, provably minimize the detection delay while controlling false alarms. In particular, in the random latent position case, we devise a novel nonparametric change point detection algorithm based on density kernel estimators that is applicable to a wide range of network settings, including stochastic block models as special cases. Our theoretical findings are supported by extensive numerical experiments, with the code available online (https://github.com/MountLee/MRDPG).

多层网络随机点积图变点检测张量方法