Interval estimation for the proportion parameter in one-sample misclassified binary data has caught much interest in the literature. Recently, an approximate Bayesian approach has been proposed. This approach is simpler to implement and performs better than existing frequentist approaches. However, because a normal approximation to the marginal posterior density was used in the Bayesian approach, some efficiency may be lost. We develop a closed-form fully Bayesian algorithm which draws a posterior sample of the proportion parameter from the exact marginal posterior distribution. We conducted simulations to show that our fully Bayesian algorithm is easier to implement and has better coverage than the approximate Bayesian approach
We investigate the sample size problem when a binomial parameter is to be estimated, but some degree...
2000 Mathematics Subject Classification: 62F15.The Negative Binomial model, which is generated by a ...
Abstract. This paper presents several new results on Bayesian sample size deter-mination for estimat...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
We consider Bayesian inference about the mean of a binary variable that is subject to misclassificat...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Exposure misclassification in case–control studies leads to bias in odds ratio estimates. There has ...
Often, Bayesian analyses for epidemiological applications use objective prior distributions. These p...
We present a Bayesian analysis of a regression model with a binary covariate that may have classific...
Three Bayesian approaches are considered for the selection of binomial proportion parameters when da...
Includes bibliographical references (p. ).We consider the problem of point and interval estimation f...
In the statistical analysis of binary data, usually the binomial distribution is themost commonly us...
The main objective of this thesis is to compare the performance of confidence intervals for binomial...
In this paper, we present a Bayesian approach to estimate the mean of a binary variable and changes ...
A two‐stage Bayesian method is presented for analyzing case–control studies in which a binary variab...
We investigate the sample size problem when a binomial parameter is to be estimated, but some degree...
2000 Mathematics Subject Classification: 62F15.The Negative Binomial model, which is generated by a ...
Abstract. This paper presents several new results on Bayesian sample size deter-mination for estimat...
This paper considers estimation of success probabilities of categorical binary data subject to miscl...
We consider Bayesian inference about the mean of a binary variable that is subject to misclassificat...
Misclassification in a binary exposure variable within an unmatched prospective study may lead to a ...
Exposure misclassification in case–control studies leads to bias in odds ratio estimates. There has ...
Often, Bayesian analyses for epidemiological applications use objective prior distributions. These p...
We present a Bayesian analysis of a regression model with a binary covariate that may have classific...
Three Bayesian approaches are considered for the selection of binomial proportion parameters when da...
Includes bibliographical references (p. ).We consider the problem of point and interval estimation f...
In the statistical analysis of binary data, usually the binomial distribution is themost commonly us...
The main objective of this thesis is to compare the performance of confidence intervals for binomial...
In this paper, we present a Bayesian approach to estimate the mean of a binary variable and changes ...
A two‐stage Bayesian method is presented for analyzing case–control studies in which a binary variab...
We investigate the sample size problem when a binomial parameter is to be estimated, but some degree...
2000 Mathematics Subject Classification: 62F15.The Negative Binomial model, which is generated by a ...
Abstract. This paper presents several new results on Bayesian sample size deter-mination for estimat...