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Hauptverfasser: Tous, Jeanne, Chiquet, Julien
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2503.22467
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author Tous, Jeanne
Chiquet, Julien
author_facet Tous, Jeanne
Chiquet, Julien
contents High dimensional Gaussian graphical models provide a rigorous framework to describe a network of statistical dependencies between entities, such as genes in genomic regulation studies or species in ecology. Penalized methods, including the standard Graphical-Lasso, are well-known approaches to infer the parameters of these models. As the number of variables in the model (of entities in the network) grow, the network inference and interpretation become more complex. The Normal-Block model is introduced, a new model that clusters variables and consider a network at the cluster level. Normal-Block both adds structure to the network and reduces its size. The approach builds on Graphical-Lasso to add a penalty on the network's edges and limit the detection of spurious dependencies. A zero-inflated version of the model is also proposed to account for real-world data properties. For the inference procedure, two approaches are introduced, a straightforward method based on state-of-the-art approaches and an original, more rigorous method that simultaneously infers the clustering of variables and the association network between clusters, using a penalized variational Expectation-Maximization approach. An implementation of the model in R, in a package called \textbf{normalblockr}, is available on github\footnote{https://github.com/jeannetous/normalblockr}. The results of the models in terms of clustering and network inference are presented, using both simulated data and various types of real-world data (proteomics and words occurrences on webpages).
format Preprint
id arxiv_https___arxiv_org_abs_2503_22467
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle An integrated method for clustering and association network inference
Tous, Jeanne
Chiquet, Julien
Methodology
Applications
Computation
High dimensional Gaussian graphical models provide a rigorous framework to describe a network of statistical dependencies between entities, such as genes in genomic regulation studies or species in ecology. Penalized methods, including the standard Graphical-Lasso, are well-known approaches to infer the parameters of these models. As the number of variables in the model (of entities in the network) grow, the network inference and interpretation become more complex. The Normal-Block model is introduced, a new model that clusters variables and consider a network at the cluster level. Normal-Block both adds structure to the network and reduces its size. The approach builds on Graphical-Lasso to add a penalty on the network's edges and limit the detection of spurious dependencies. A zero-inflated version of the model is also proposed to account for real-world data properties. For the inference procedure, two approaches are introduced, a straightforward method based on state-of-the-art approaches and an original, more rigorous method that simultaneously infers the clustering of variables and the association network between clusters, using a penalized variational Expectation-Maximization approach. An implementation of the model in R, in a package called \textbf{normalblockr}, is available on github\footnote{https://github.com/jeannetous/normalblockr}. The results of the models in terms of clustering and network inference are presented, using both simulated data and various types of real-world data (proteomics and words occurrences on webpages).
title An integrated method for clustering and association network inference
topic Methodology
Applications
Computation
url https://arxiv.org/abs/2503.22467