Bayesian Inference for a Hidden Truncated Bivariate Exponential Distribution with Applications

Title
Bayesian Inference for a Hidden Truncated Bivariate Exponential Distribution with Applications
Author
김성욱
Keywords
Bayes factor; bivariate exponential distribution; Gibbs sampling; hidden truncation; informative prior; posterior probability
Issue Date
2024-02-22
Publisher
MDPI
Citation
AXIOMS, v. 13, no 3, page. 1-18
Abstract
In many real-life scenarios, one variable is observed only if the other concomitant variable or the set of concomitant variables (in the multivariate scenario) is truncated from below, above, or from a two-sided approach. Hidden truncation models have been applied to analyze data when bivariate or multivariate observations are subject to some form of truncation. While the statistical inference for hidden truncation models (truncation from above) under the frequentist and the Bayesian paradigms has been adequately discussed in the literature, the estimation of a two-sided hidden truncation model under the Bayesian framework has not yet been discussed. In this paper, we consider the Bayesian inference for a general two-sided hidden truncation model based on the Arnold-Strauss bivariate exponential distribution. In addition, a Bayesian model selection approach based on the Bayes factor to select between models without truncation, with truncation from below, from above, and two-sided truncation is also explored. An extensive simulation study is carried out for varying parameter choices under the conjugate prior set-up. For illustrative purposes, a real-life dataset is re-analyzed to demonstrate the applicability of the proposed methodology.
URI
https://www.mdpi.com/2075-1680/13/3/140https://repository.hanyang.ac.kr/handle/20.500.11754/190939
ISSN
2075-1680
DOI
https://doi.org/10.3390/axioms13030140
Appears in Collections:
COLLEGE OF SCIENCE AND CONVERGENCE TECHNOLOGY[E](과학기술융합대학) > ETC
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