An Asymptotically Optimal Coordinate Descent Algorithm for Learning Bayesian Networks from Gaussian Models
Authors
Research Topics
Paper Information
-
Journal:
Journal of Machine Learning Research -
Added to Tracker:
Dec 30, 2025
Abstract
This paper studies the problem of learning Bayesian networks from continuous observational data, generated according to a linear Gaussian structural equation model. We consider an $\ell_0$-penalized maximum likelihood estimator for this problem, which is known to have favorable statistical properties but is computationally challenging to solve, especially for medium-sized Bayesian networks. We propose a new coordinate descent algorithm to approximate this estimator and prove several remarkable properties of our procedure: The algorithm converges to a coordinate-wise minimum, and despite the non-convexity of the loss function, as the sample size tends to infinity, the objective value of the coordinate descent solution converges to the optimal objective value of the $\ell_0$-penalized maximum likelihood estimator. To the best of our knowledge, our proposal is the first coordinate descent procedure endowed with optimality guarantees in the context of learning Bayesian networks. Numerical experiments on synthetic and real data demonstrate that our coordinate descent method can obtain near-optimal solutions while being scalable.
Author Details
Tong Xu
AuthorArmeen Taeb
AuthorSimge Küçükyavuz
AuthorAli Shojaie
AuthorResearch Topics & Keywords
Computational Statistics
Research AreaBayesian Statistics
Research AreaCitation Information
APA Format
Tong Xu
,
Armeen Taeb
,
Simge Küçükyavuz
&
Ali Shojaie
.
An Asymptotically Optimal Coordinate Descent Algorithm for Learning Bayesian Networks from Gaussian Models.
Journal of Machine Learning Research
.
BibTeX Format
@article{paper680,
title = { An Asymptotically Optimal Coordinate Descent Algorithm for Learning Bayesian Networks from Gaussian Models },
author = {
Tong Xu
and Armeen Taeb
and Simge Küçükyavuz
and Ali Shojaie
},
journal = { Journal of Machine Learning Research },
url = { https://www.jmlr.org/papers/v26/24-1657.html }
}