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Reconsidering Dependency Networks from an Information Geometry Perspective

arXiv:2604.011173.3
Predicted impact top 98% in LG · last 90 daysOriginality Incremental advance
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This work provides a theoretical framework for dependency networks, which are used in modeling complex systems, but it is incremental as it builds on existing methods.

The paper tackled the incomplete theoretical foundations of dependency networks by developing an information-geometric analysis of pseudo-Gibbs sampling, introducing a divergence measure and proving convergence to the true distribution with infinite training samples.

Dependency networks (Heckerman et al., 2000) provide a flexible framework for modeling complex systems with many variables by combining independently learned local conditional distributions through pseudo-Gibbs sampling. Despite their computational advantages over Bayesian and Markov networks, the theoretical foundations of dependency networks remain incomplete, primarily because their model distributions -- defined as stationary distributions of pseudo-Gibbs sampling -- lack closed-form expressions. This paper develops an information-geometric analysis of pseudo-Gibbs sampling, interpreting each sampling step as an m-projection onto a full conditional manifold. Building on this interpretation, we introduce the full conditional divergence and derive an upper bound that characterizes the location of the stationary distribution in the space of probability distributions. We then reformulate both structure and parameter learning as optimization problems that decompose into independent subproblems for each node, and prove that the learned model distribution converges to the true underlying distribution as the number of training samples grows to infinity. Experiments confirm that the proposed upper bound is tight in practice.

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