Directed Information Graphs
Christopher J. Quinn, Negar Kiyavash, and Todd P. Coleman

TL;DR
This paper introduces a new graphical model for stochastic process networks based on directed information, providing methods for structure learning, causality quantification, and applications to real-world data like Twitter.
Contribution
It develops a minimal generative model graph, establishes its relation to directed information graphs, and proposes efficient algorithms for structure estimation from data.
Findings
Algorithms accurately identify network structure from synthetic data.
Directed information effectively quantifies Granger causality in sequential predictions.
Application to Twitter data reveals influential news sources.
Abstract
We propose a graphical model for representing networks of stochastic processes, the minimal generative model graph. It is based on reduced factorizations of the joint distribution over time. We show that under appropriate conditions, it is unique and consistent with another type of graphical model, the directed information graph, which is based on a generalization of Granger causality. We demonstrate how directed information quantifies Granger causality in a particular sequential prediction setting. We also develop efficient methods to estimate the topological structure from data that obviate estimating the joint statistics. One algorithm assumes upper-bounds on the degrees and uses the minimal dimension statistics necessary. In the event that the upper-bounds are not valid, the resulting graph is nonetheless an optimal approximation. Another algorithm uses near-minimal dimension…
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