Bayesian sparse graphical models and their mixtures
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Publication:6537781
DOI10.1002/STA4.49MaRDI QIDQ6537781
Veerabhadran Baladandayuthapani, Rajesh Talluri, Bani Mallick
Publication date: 14 May 2024
Published in: Stat (Search for Journal in Brave)
BayesianGaussian graphical modelsfinite mixturescovariance selectionsparse modellinginfinite mixtures
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Related Items (4)
Bayesian graphical modeling for heterogeneous causal effects ⋮ Joint modeling of association networks and longitudinal biomarkers: an application to childhood obesity ⋮ Covariate-Assisted Bayesian Graph Learning for Heterogeneous Data ⋮ Bayesian Structure Learning in Undirected Gaussian Graphical Models: Literature Review with Empirical Comparison
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