Bayesian graph selection consistency under model misspecification
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Publication:2214264
DOI10.3150/20-BEJ1253zbMath1476.62121arXiv1901.04134MaRDI QIDQ2214264
Debdeep Pati, Yabo Niu, Bani. K. Mallick
Publication date: 7 December 2020
Published in: Bernoulli (Search for Journal in Brave)
Full work available at URL: https://arxiv.org/abs/1901.04134
minimal triangulationmodel misspecificationhyper-inverse Wishart distributionGaussian graphical modelpartial correlationdecomposable graphgraph selection consistency
Bayesian inference (62F15) Applications of graph theory (05C90) Probabilistic graphical models (62H22) Algebraic statistics (62R01)
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