4.4 Article

A hierarchical Bayesian analysis for bivariate Weibull distribution under left-censoring scheme

期刊

JOURNAL OF APPLIED STATISTICS
卷 -, 期 -, 页码 -

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TAYLOR & FRANCIS LTD
DOI: 10.1080/02664763.2023.2235093

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Weibull distribution; Tobit model; Bayesian analysis; stellar data; left-censored data; >

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This paper presents a novel approach for analyzing bivariate positive data with left-censored observations and covariate information using hierarchical Bayesian analysis. The proposed method assumes marginal Weibull distributions and employs either a usual Weibull likelihood or Weibull-Tobit likelihood approaches. The results demonstrate that incorporating a latent factor in the bivariate model to capture potential dependence produces accurate inference results, and the proposed hierarchical Bayesian analysis is promising for analyzing such data.
This paper presents a novel approach for analyzing bivariate positive data, taking into account a covariate vector and left-censored observations, by introducing a hierarchical Bayesian analysis. The proposed method assumes marginal Weibull distributions and employs either a usual Weibull likelihood or Weibull-Tobit likelihood approaches. A latent variable or frailty is included in the model to capture the possible correlation between the bivariate responses for the same sampling unit. The posterior summaries of interest are obtained through Markov Chain Monte Carlo methods. To demonstrate the effectiveness of the proposed methodology, we apply it to a bivariate data set from stellar astronomy that includes left-censored observations and covariates. Our results indicate that the new bivariate model approach, which incorporates the latent factor to capture the potential dependence between the two responses of interest, produces accurate inference results. We also compare the two models using the different likelihood approaches (Weibull or Weibull-Tobit likelihoods) in the application. Overall, our findings suggest that the proposed hierarchical Bayesian analysis is a promising approach for analyzing bivariate positive data with left-censored observations and covariate information.

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