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Note on posterior inference for the Bingham distribution
Authors:Mike G Tsionas
Institution:1. Department of Economics, Lancaster University Management School, UK;2. Department of Economics, Athens University of Economics and Business, Greecem.tsionas@lancaster.ac.uk
Abstract:The properties of high-dimensional Bingham distributions have been studied by Kume and Walker (2014 Kume, A., and S. G. Walker. 2014. On the Bingham distribution with large dimension. Journal of Multivariate Analysis 124:34552.Crossref], Web of Science ®] Google Scholar]). Fallaize and Kypraios (2016 Fallaize, C. J., and T. Kypraios. 2016. Exact Bayesian inference for the Bingham distribution. Statistics and Computing 26:34960.Crossref], Web of Science ®] Google Scholar]) propose the Bayesian inference for the Bingham distribution and they use developments in Bayesian computation for distributions with doubly intractable normalizing constants (Møller et al. 2006 Møller, J., A. N. Pettitt, R. Reeves, and K. K. Berthelsen. 2006. An efficient Markov chain Monte Carlo method for distributions with intractable normalising constants. Biometrika 93 (2):451458.Crossref], Web of Science ®] Google Scholar]; Murray, Ghahramani, and MacKay 2006 Murray, I., Z. Ghahramani, and D. J. C. MacKay. 2006. MCMC for doubly intractable distributions. In Proceedings of the 22nd annual conference on uncertainty in artificial intelligence (UAI-06), 35966. AUAI Press. Google Scholar]). However, they rely heavily on two Metropolis updates that they need to tune. In this article, we propose instead a model selection with the marginal likelihood.
Keywords:Bayesian  Bingham distribution  Marginal likelihood  Markov chain Monte Carlo  
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