Variational inference for sparse network reconstruction from count data
Julien Chiquet, Mahendra Mariadassou, St\'ephane Robin

TL;DR
This paper introduces a variational inference method for reconstructing sparse networks from count data using a multivariate Poisson lognormal model, effectively capturing dependencies and covariate effects without data transformation.
Contribution
It presents a novel variational approach for direct network inference from count data with a latent Poisson lognormal model, avoiding traditional data transformation methods.
Findings
Method performs well on microbiological data simulations.
Accounting for covariates significantly alters network topology.
Approach is competitive with existing methods.
Abstract
In multivariate statistics, the question of finding direct interactions can be formulated as a problem of network inference - or network reconstruction - for which the Gaussian graphical model (GGM) provides a canonical framework. Unfortunately, the Gaussian assumption does not apply to count data which are encountered in domains such as genomics, social sciences or ecology. To circumvent this limitation, state-of-the-art approaches use two-step strategies that first transform counts to pseudo Gaussian observations and then apply a (partial) correlation-based approach from the abundant literature of GGM inference. We adopt a different stance by relying on a latent model where we directly model counts by means of Poisson distributions that are conditional to latent (hidden) Gaussian correlated variables. In this multivariate Poisson lognormal-model, the dependency structure is…
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Taxonomy
TopicsBioinformatics and Genomic Networks · Statistical Methods and Bayesian Inference · Bayesian Methods and Mixture Models
