Accurate directional inference in Gaussian graphical models

03/29/2021
by   Claudia Di Caterina, et al.
0

Directional tests to compare nested parametric models are developed in the general context of covariance selection for Gaussian graphical models. The exactness of the underlying saddlepoint approximation leads to exceptional accuracy of the proposed approach. This is verified by simulation experiments with high-dimensional parameters of interest, where the accuracy of standard asymptotic approximations to the likelihood ratio test and some of its higher-order modifications fails. The directional p-value isused to illustrate the assessment of Markovian dependencies in a dataset from a veterinary trial on cattle. A second example with microarray data shows how to select the graph structure related to genetic anomalies due to acute lymphocytic leukemia.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/25/2016

Learning Gaussian Graphical Models With Fractional Marginal Pseudo-likelihood

We propose a Bayesian approximate inference method for learning the depe...
research
08/12/2018

A New Look at F-Tests

Directional inference for vector parameters based on higher order approx...
research
02/10/2012

High Dimensional Semiparametric Gaussian Copula Graphical Models

In this paper, we propose a semiparametric approach, named nonparanormal...
research
04/27/2011

Learning Undirected Graphical Models with Structure Penalty

In undirected graphical models, learning the graph structure and learnin...
research
10/24/2022

Copula graphical models for heterogeneous mixed data

This article proposes a graphical model that can handle mixed-type, mult...
research
12/09/2019

An empirical G-Wishart prior for sparse high-dimensional Gaussian graphical models

In Gaussian graphical models, the zero entries in the precision matrix d...
research
06/01/2012

OpenGM: A C++ Library for Discrete Graphical Models

OpenGM is a C++ template library for defining discrete graphical models ...

Please sign up or login with your details

Forgot password? Click here to reset