Learning Gaussian Graphical Models with Latent Confounders

05/14/2021
by   Ke Wang, et al.
0

Gaussian Graphical models (GGM) are widely used to estimate the network structures in many applications ranging from biology to finance. In practice, data is often corrupted by latent confounders which biases inference of the underlying true graphical structure. In this paper, we compare and contrast two strategies for inference in graphical models with latent confounders: Gaussian graphical models with latent variables (LVGGM) and PCA-based removal of confounding (PCA+GGM). While these two approaches have similar goals, they are motivated by different assumptions about confounding. In this paper, we explore the connection between these two approaches and propose a new method, which combines the strengths of these two approaches. We prove the consistency and convergence rate for the PCA-based method and use these results to provide guidance about when to use each method. We demonstrate the effectiveness of our methodology using both simulations and in two real-world applications.

READ FULL TEXT

page 15

page 16

research
01/16/2014

Nonparametric Latent Tree Graphical Models: Inference, Estimation, and Structure Learning

Tree structured graphical models are powerful at expressing long range o...
research
01/07/2021

Identification of Latent Variables From Graphical Model Residuals

Graph-based causal discovery methods aim to capture conditional independ...
research
05/08/2020

Latent Racial Bias – Evaluating Racism in Police Stop-and-Searches

In this paper, we introduce the latent racial bias, a metric and method ...
research
06/13/2018

High-Dimensional Inference for Cluster-Based Graphical Models

Motivated by modern applications in which one constructs graphical model...
research
10/23/2022

Estimating Gaussian graphical models of multi-study data with Multi-Study Factor Analysis

Network models are powerful tools for gaining new insights from complex ...
research
07/29/2020

Connecting actuarial judgment to probabilistic learning techniques with graph theory

Graphical models have been widely used in applications ranging from medi...
research
03/12/2017

Sequential Local Learning for Latent Graphical Models

Learning parameters of latent graphical models (GM) is inherently much h...

Please sign up or login with your details

Forgot password? Click here to reset