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MA
2016
Springer

A skew Gaussian decomposable graphical model

8 years 8 months ago
A skew Gaussian decomposable graphical model
This paper propose a novel decomposable graphical model to accommodate skew Gaussian graphical models. We encode conditional independence structure among the components of the multivariate closed skew normal random vector by means of a decomposable graph and so that the pattern of zero off-diagonal elements in the precision matrix corresponds to the missing edges of the given graph. We present conditions that guarantee the propriety of the posterior distributions under the standard noninformative priors for mean vector and precision matrix, and a proper prior for skewness parameter. The identifiability of the parameters is investigated by a simulation study. Finally, we apply our methodology to two data sets.
Hamid Zareifard, Håvard Rue, Majid Jafari Kh
Added 07 Apr 2016
Updated 07 Apr 2016
Type Journal
Year 2016
Where MA
Authors Hamid Zareifard, Håvard Rue, Majid Jafari Khaledi, Finn Lindgren
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