Statistics > Methodology
[Submitted on 25 Jun 2023]
Title:A naıve Bayesian graphical elastic net: driving advances in differential network analysis
View PDFAbstract:Differential Networks (DNs), tools that encapsulate interactions within intricate systems, are brought under the Bayesian lens in this research. A novel naıve Bayesian adaptive graphical elastic net (BAE) prior is introduced to estimate the components of the DN. A heuristic structure determination mechanism and a block Gibbs sampler are derived. Performance is initially gauged on synthetic datasets encompassing various network topologies, aiming to assess and compare the flexibility to those of the Bayesian adaptive graphical lasso and ridge-type procedures. The naıve BAE estimator consistently ranks within the top two performers, highlighting its inherent adaptability. Finally, the BAE is applied to real-world datasets across diverse domains such as oncology, nephrology, and enology, underscoring its potential utility in comprehensive network analysis.
Submission history
From: Mohammad Arashi [view email][v1] Sun, 25 Jun 2023 10:31:33 UTC (10,740 KB)
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