MLAIMay 3, 2013

Marginal AMP Chain Graphs

arXiv:1305.0751v625 citations
Originality Incremental advance
AI Analysis

This work provides a theoretical framework for modeling complex dependencies in probabilistic graphical models, which is incremental but enhances flexibility for applications in statistics and machine learning.

The authors introduced Marginal AMP (MAMP) chain graphs, a new family of graphical models that unify and extend existing chain graph types, and proved their Markov properties and equivalence conditions, including closure under marginalization for Gaussian distributions.

We present a new family of models that is based on graphs that may have undirected, directed and bidirected edges. We name these new models marginal AMP (MAMP) chain graphs because each of them is Markov equivalent to some AMP chain graph under marginalization of some of its nodes. However, MAMP chain graphs do not only subsume AMP chain graphs but also multivariate regression chain graphs. We describe global and pairwise Markov properties for MAMP chain graphs and prove their equivalence for compositional graphoids. We also characterize when two MAMP chain graphs are Markov equivalent. For Gaussian probability distributions, we also show that every MAMP chain graph is Markov equivalent to some directed and acyclic graph with deterministic nodes under marginalization and conditioning on some of its nodes. This is important because it implies that the independence model represented by a MAMP chain graph can be accounted for by some data generating process that is partially observed and has selection bias. Finally, we modify MAMP chain graphs so that they are closed under marginalization for Gaussian probability distributions. This is a desirable feature because it guarantees parsimonious models under marginalization.

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