On the maximum likelihood degree for Gaussian graphical models
Statistics Theory
2024-10-10 v1 Algebraic Geometry
Statistics Theory
Abstract
In this paper we revisit the likelihood geometry of Gaussian graphical models. We give a detailed proof that the ML-degree behaves monotonically on induced subgraphs. Furthermore, we complete a missing argument that the ML-degree of the -th cycle is larger than one for any , therefore completing the characterization that the only Gaussian graphical models with rational maximum likelihood estimator are the ones corresponding to chordal (decomposable) graphs. Finally, we prove that the formula for the ML-degree of a cycle conjectured by Drton, Sturmfels and Sullivant provides a correct lower bound.
Keywords
Cite
@article{arxiv.2410.07007,
title = {On the maximum likelihood degree for Gaussian graphical models},
author = {Carlos Améndola and Rodica Andreea Dinu and Mateusz Michałek and Martin Vodička},
journal= {arXiv preprint arXiv:2410.07007},
year = {2024}
}