MLMEAug 7, 2016

Bayesian Learning of Dynamic Multilayer Networks

arXiv:1608.02209v227 citations
AI Analysis

This addresses the lack of flexible statistical models for dynamic multilayer networks in fields like disease transmission and social interactions, offering incremental improvements in inference and prediction.

The authors tackled the problem of modeling dynamic multilayer networks, which are time-varying interconnections among actors in multiple contexts, by developing a Bayesian nonparametric model using latent space representations with Gaussian processes, resulting in improved inference and prediction compared to current methods in simulations and infection studies.

A plethora of networks is being collected in a growing number of fields, including disease transmission, international relations, social interactions, and others. As data streams continue to grow, the complexity associated with these highly multidimensional connectivity data presents novel challenges. In this paper, we focus on the time-varying interconnections among a set of actors in multiple contexts, called layers. Current literature lacks flexible statistical models for dynamic multilayer networks, which can enhance quality in inference and prediction by efficiently borrowing information within each network, across time, and between layers. Motivated by this gap, we develop a Bayesian nonparametric model leveraging latent space representations. Our formulation characterizes the edge probabilities as a function of shared and layer-specific actors positions in a latent space, with these positions changing in time via Gaussian processes. This representation facilitates dimensionality reduction and incorporates different sources of information in the observed data. In addition, we obtain tractable procedures for posterior computation, inference, and prediction. We provide theoretical results on the flexibility of our model. Our methods are tested on simulations and infection studies monitoring dynamic face-to-face contacts among individuals in multiple days, where we perform better than current methods in inference and prediction.

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