Community Detection in Weighted Multilayer Networks with Ambient Noise
Mark He, Dylan Lu, Jason Xu, Rose Mary Xavier

TL;DR
This paper presents SBANM, a new model for multilayer weighted networks that incorporates ambient noise, enabling simultaneous community detection and noise differentiation, demonstrated through neurodevelopmental data analysis.
Contribution
Introduces SBANM, a novel multilayer network model that accounts for ambient noise and allows joint community detection and block typologizing using hierarchical variational inference.
Findings
Successfully detects communities with co-occurring psychopathologies.
Differentiates signal blocks from ambient noise.
Provides insights into neurodevelopmental disorder patterns.
Abstract
We introduce a novel model for multilayer weighted networks that accounts for global noise in addition to local signals. The model is similar to a multilayer stochastic blockmodel (SBM), but the key difference is that between-block interactions independent across layers are common for the whole system, which we call ambient noise. A single block is also characterized by these fixed ambient parameters to represent members that do not belong anywhere else. This approach allows simultaneous clustering and typologizing of blocks into signal or noise in order to better understand their roles in the overall system, which is not accounted for by existing Blockmodels. We employ a novel application of hierarchical variational inference to jointly detect and differentiate types of blocks. We call this model for multilayer weighted networks the Stochastic Block (with) Ambient Noise Model (SBANM)…
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Taxonomy
TopicsComplex Network Analysis Techniques · Mental Health Research Topics · Functional Brain Connectivity Studies
MethodsVariational Inference
