Multiview Graph Fusion with Covariates
Sharmistha Guha, Jose Rodriguez-Acosta, Ivo Dinov

TL;DR
This paper introduces a Bayesian framework for joint modeling of multiview graphs with predictors, enabling integrated inference and uncertainty quantification, validated through simulations and neuroscience data analysis.
Contribution
It proposes a novel hierarchical Bayesian method for multiview graph fusion with covariates, addressing limitations of traditional independent or predictor-agnostic approaches.
Findings
Theoretical posterior convergence guarantees.
Improved inference over existing methods in simulations.
Successful application to neuroscience connectivity data.
Abstract
Joint modeling of multiview graphs with a common set of nodes between views and auxiliary predictors is an essential, yet less explored, area in statistical methodology. Traditional approaches often treat graphs in different views as independent or fail to adequately incorporate predictors, potentially missing complex dependencies within and across graph views and leading to reduced inferential accuracy. Motivated by such methodological shortcomings, we introduce an integrative Bayesian approach for joint learning of a multiview graph with vector-valued predictors. Our modeling framework assumes a common set of nodes for each graph view while allowing for diverse interconnections or edge weights between nodes across graph views, accommodating both binary and continuous valued edge weights. By adopting a hierarchical Bayesian modeling approach, our framework seamlessly integrates…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Graph Neural Networks · Domain Adaptation and Few-Shot Learning
