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Monte carlo methods for bayesian inference on the linear hazard rate distribution

資料類型期刊論文
題名(外文)Monte carlo methods for bayesian inference on the linear hazard rate distribution
作者
出版年月2006/09
刊名(外文)Communications in Statistics - Simulation and Computation
35
3
頁次575-590
出版者Taylor & Francis
關鍵字(外文)Bayesian computation; General progressive Type-II censoring; Markov Chain Monte Carlo (MCMC) method; Prediction; Simulation
摘要(外文)  The Bayesian estimation and prediction problems for the linear hazard rate distribution under general progressively Type-II censored samples are considered in this article. The conventional Bayesian framework as well as the Markov Chain Monte Carlo (MCMC) method to generate the Bayesian conditional probabilities of interest are discussed. Sensitivity of the prior for the model is also examined. The flood data on Fox River, Wisconsin, from 1918 to 1950, are used to illustrate all the methods of inference discussed in this article.