Exploration of the Search Space of Gaussian Graphical Models for Paired Data

Abstract

We consider the problem of learning a Gaussian graphical model in the case where the observations come from two dependent groups sharing the same variables. We focus on a family of coloured Gaussian graphical models specifically suited for the paired data problem. Commonly, graphical models are ordered by the submodel relationship so that the search space is a lattice, called the model inclusion lattice. We introduce a novel order between models, named the twin order. We show that, embedded with this order, the model space is a lattice that, unlike the model inclusion lattice, is distributive. Furthermore, we provide the relevant rules for the computation of the neighbours of a model. The latter are more efficient than the same operations in the model inclusion lattice, and are then exploited to achieve a more efficient exploration of the search space. These results can be applied to improve the efficiency of both greedy and Bayesian model search procedures. Here, we implement a stepwise backward elimination procedure and evaluate its performance both on synthetic and real-world data.

Cite

Text

Roverato and Nguyen. "Exploration of the Search Space of Gaussian Graphical Models for Paired Data." Journal of Machine Learning Research, 2024.

Markdown

[Roverato and Nguyen. "Exploration of the Search Space of Gaussian Graphical Models for Paired Data." Journal of Machine Learning Research, 2024.](https://mlanthology.org/jmlr/2024/roverato2024jmlr-exploration/)

BibTeX

@article{roverato2024jmlr-exploration,
  title     = {{Exploration of the Search Space of Gaussian Graphical Models for Paired Data}},
  author    = {Roverato, Alberto and Nguyen, Dung Ngoc},
  journal   = {Journal of Machine Learning Research},
  year      = {2024},
  pages     = {1-41},
  volume    = {25},
  url       = {https://mlanthology.org/jmlr/2024/roverato2024jmlr-exploration/}
}