Bayesian Regression with Undirected Network Predictors with an Application to Brain Connectome Data
Sharmistha Guha, Abel Rodriguez

TL;DR
This paper introduces a Bayesian regression method tailored for undirected network predictors, effectively identifying key network nodes and edges associated with a continuous response, demonstrated on brain connectome data to uncover neural correlates of creativity.
Contribution
It presents a novel Bayesian network shrinkage prior and an efficient MCMC algorithm, improving inference and prediction in small sample high-dimensional network regression problems.
Findings
Superior predictive performance over existing methods
Effective detection of important network nodes and edges
Successful application to brain connectome data
Abstract
This article proposes a Bayesian approach to regression with a continuous scalar response and an undirected network predictor. Undirected network predictors are often expressed in terms of symmetric adjacency matrices, with rows and columns of the matrix representing the nodes, and zero entries signifying no association between two corresponding nodes. Network predictor matrices are typically vectorized prior to any analysis, thus failing to account for the important structural information in the network. This results in poor inferential and predictive performance in presence of small sample sizes. We propose a novel class of network shrinkage priors for the coefficient corresponding to the undirected network predictor. The proposed framework is devised to detect both nodes and edges in the network predictive of the response. Our framework is implemented using an efficient Markov Chain…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Complex Network Analysis Techniques · Mental Health Research Topics
