MLLGSTJun 20, 2018

Sequential change-point detection in high-dimensional Gaussian graphical models

arXiv:1806.07870v111 citations
Originality Highly original
AI Analysis

This addresses the need for real-time monitoring in applications like sensor networks and finance, where offline methods are insufficient, representing a novel contribution to an underexplored area.

The paper tackles the problem of online detection of abrupt changes in high-dimensional Gaussian graphical models, introducing a scalable algorithm that achieves small delay in detecting unknown numbers of changes with good computational and statistical performance on synthetic and real data.

High dimensional piecewise stationary graphical models represent a versatile class for modelling time varying networks arising in diverse application areas, including biology, economics, and social sciences. There has been recent work in offline detection and estimation of regime changes in the topology of sparse graphical models. However, the online setting remains largely unexplored, despite its high relevance to applications in sensor networks and other engineering monitoring systems, as well as financial markets. To that end, this work introduces a novel scalable online algorithm for detecting an unknown number of abrupt changes in the inverse covariance matrix of sparse Gaussian graphical models with small delay. The proposed algorithm is based upon monitoring the conditional log-likelihood of all nodes in the network and can be extended to a large class of continuous and discrete graphical models. We also investigate asymptotic properties of our procedure under certain mild regularity conditions on the graph size, sparsity level, number of samples, and pre- and post-changes in the topology of the network. Numerical works on both synthetic and real data illustrate the good performance of the proposed methodology both in terms of computational and statistical efficiency across numerous experimental settings.

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