Tracking Time-varying Graphical Structure

Abstract

Structure learning algorithms for graphical models have focused almost exclusively on stable environments in which the underlying generative process does not change; that is, they assume that the generating model is globally stationary. In real-world environments, however, such changes often occur without warning or signal. Real-world data often come from generating models that are only locally stationary. In this paper, we present LoSST, a novel, heuristic structure learning algorithm that tracks changes in graphical model structure or parameters in a dynamic, real-time manner. We show by simulation that the algorithm performs comparably to batch-mode learning when the generating graphical structure is globally stationary, and significantly better when it is only locally stationary

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David Danks
University of California, San Diego

Citations of this work

The Semantics Latent in Shannon Information.M. C. Isaac Alistair - 2019 - British Journal for the Philosophy of Science 70 (1):103-125.
Unmixing for Causal Inference: Thoughts on McCaffrey and Danks.Kun Zhang & Madelyn R. K. Glymour - 2018 - British Journal for the Philosophy of Science 71 (4):1319-1330.

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