Transfer Learning in Large-scale Gaussian Graphical Models with False Discovery Rate Control

10/21/2020
by   Sai Li, et al.
5

Transfer learning for high-dimensional Gaussian graphical models (GGMs) is studied with the goal of estimating the target GGM by utilizing the data from similar and related auxiliary studies. The similarity between the target graph and each auxiliary graph is characterized by the sparsity of a divergence matrix. An estimation algorithm, Trans-CLIME, is proposed and shown to attain a faster convergence rate than the minimax rate in the single study setting. Furthermore, a debiased Trans-CLIME estimator is introduced and shown to be element-wise asymptotically normal. It is used to construct a multiple testing procedure for edge detection with false discovery rate control. The proposed estimation and multiple testing procedures demonstrate superior numerical performance in simulations and are applied to infer the gene networks in a target brain tissue by leveraging the gene expressions from multiple other brain tissues. A significant decrease in prediction errors and a significant increase in power for link detection are observed.

READ FULL TEXT
research
12/26/2021

Transfer Learning in High-dimensional Semi-parametric Graphical Models with Application to Brain Connectivity Analysis

Transfer learning has drawn growing attention with the target of improvi...
research
06/18/2020

Transfer Learning for High-dimensional Linear Regression: Prediction, Estimation, and Minimax Optimality

This paper considers the estimation and prediction of a high-dimensional...
research
07/08/2019

False Discovery Rates in Biological Networks

The increasing availability of data has generated unprecedented prospect...
research
03/22/2022

Locally Adaptive Transfer Learning Algorithms for Large-Scale Multiple Testing

Transfer learning has enjoyed increasing popularity in a range of big da...
research
11/17/2022

Transfer learning for tensor Gaussian graphical models

Tensor Gaussian graphical models (GGMs), interpreting conditional indepe...
research
07/09/2013

Controlling the Precision-Recall Tradeoff in Differential Dependency Network Analysis

Graphical models have gained a lot of attention recently as a tool for l...
research
08/23/2021

StarTrek: Combinatorial Variable Selection with False Discovery Rate Control

Variable selection on the large-scale networks has been extensively stud...

Please sign up or login with your details

Forgot password? Click here to reset