Bayesian Inferences for Software Reliability Models Based on Beta-Mixture Mean Value Functions
  • 남승민
  • 김기웅
  • 조신섭
  • 여인권
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초록

In this paper, we investigate a Bayesian inference for software reliability models based on mean value functions which take the form of the mixture of beta distribution functions. The posterior simulation via the Markov chain Monte Carlo approach is used to produce estimates of posterior properties. Its applicability is illustrated with two real data sets. We compute the predictive distribution and the marginal likelihood of various models to compare the performance of them. The model comparison results show that the model based on the beta-mixture performs better than other models.

키워드

Beta-mixtureMCMCmean value functionnonhomogeneous Poissonprocesses.
제목
Bayesian Inferences for Software Reliability Models Based on Beta-Mixture Mean Value Functions
저자
남승민김기웅조신섭여인권
발행일
2008-10
저널명
응용통계연구
21
5
페이지
835 ~ 843