Global Optimality in Bivariate Gradient-based DAG Learning
Machine Learning
2023-07-03 v1 Machine Learning
Abstract
Recently, a new class of non-convex optimization problems motivated by the statistical problem of learning an acyclic directed graphical model from data has attracted significant interest. While existing work uses standard first-order optimization schemes to solve this problem, proving the global optimality of such approaches has proven elusive. The difficulty lies in the fact that unlike other non-convex problems in the literature, this problem is not "benign", and possesses multiple spurious solutions that standard approaches can easily get trapped in. In this paper, we prove that a simple path-following optimization scheme globally converges to the global minimum of the population loss in the bivariate setting.
Cite
@article{arxiv.2306.17378,
title = {Global Optimality in Bivariate Gradient-based DAG Learning},
author = {Chang Deng and Kevin Bello and Bryon Aragam and Pradeep Ravikumar},
journal= {arXiv preprint arXiv:2306.17378},
year = {2023}
}
Comments
39 pages, 13 figures