Gaussian Mixture Graphical Lasso with Application to Edge Detection in Brain Networks
Hang Yin, Xinyue Liu, Xiangnan Kong

TL;DR
This paper introduces Gaussian Mixture Graphical Lasso (MGL), a novel method for edge detection in brain networks that models complex node activity patterns as mixtures of multiple Gaussians, improving interpretability and robustness.
Contribution
The paper proposes MGL, a new model that estimates multiple Gaussian components for network edges using an EM framework with a novel regularization for better interpretability.
Findings
MGL effectively uncovers multiple connectivity structures in synthetic data.
MGL outperforms existing methods on real brain network data.
The Mutual Exclusivity Regularization enhances network interpretability.
Abstract
Sparse inverse covariance estimation (i.e., edge de-tection) is an important research problem in recent years, wherethe goal is to discover the direct connections between a set ofnodes in a networked system based upon the observed nodeactivities. Existing works mainly focus on unimodal distributions,where it is usually assumed that the observed activities aregenerated from asingleGaussian distribution (i.e., one graph).However, this assumption is too strong for many real-worldapplications. In many real-world applications (e.g., brain net-works), the node activities usually exhibit much more complexpatterns that are difficult to be captured by one single Gaussiandistribution. In this work, we are inspired by Latent DirichletAllocation (LDA) [4] and consider modeling the edge detectionproblem as estimating a mixture ofmultipleGaussian distribu-tions, where each corresponds to a separate…
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Taxonomy
TopicsFunctional Brain Connectivity Studies · Advanced Neuroimaging Techniques and Applications · Statistical Methods and Inference
