Variable selection for Poisson regression when the response variable is potentially underreported is considered. A logistic regression model is used to model the latent underreporting probabilities. An efficient MCMC sampling scheme is designed, incorporating uncertainty about which explanatory variables affect the dependent variable and which affect the underreporting probabilities. Validation data is required in order to identify and estimate all parameters. A simulation study illustrates favorable results both in terms of variable selection and parameter estimation. Finally, the procedure is applied to a real data example concerning deaths from cervical cancer.Misclassification Poisson regression MCMC Model uncertainty
Includes bibliographical references (p. 99-101).We present interval estimation methods for comparing...
Sample size determination continues to be an important research area in statistical analysis due to ...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
The analysis of count data within the framework of regression models plays a crucial role in many ap...
Includes bibliographical references (p. 175-178).Response partial missingness is a problem in studie...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
Measurement error problems in binary regression are of considerable interest among researchers, espe...
Count data are subject to considerable sources of what is often referred to as non-sampling error. E...
Data quality is emerging as an essential characteristics of all data driven processes. The implicati...
The Importance Sampling method is used as an alternative approach to MCMC in repeated Bayesian estim...
Misclassification of an outcome and/or covariate is present in many regression applications due to t...
Several MCMC methods have been proposed for estimating probabilities of models and associated 'model...
International audienceAbstract: The Importance Sampling method is used as an alternative approach to...
Covariate and confounder selection in case-control studies is most commonly carried out using either...
Includes bibliographical references (p. 99-101).We present interval estimation methods for comparing...
Sample size determination continues to be an important research area in statistical analysis due to ...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...
Bias in parameter estimation of count data is a common concern. The concern is even greater when all...
The analysis of count data within the framework of regression models plays a crucial role in many ap...
Includes bibliographical references (p. 175-178).Response partial missingness is a problem in studie...
Includes bibliographical references (p. ).Mismeasurment, and specifically misclassification, are ine...
Measurement error problems in binary regression are of considerable interest among researchers, espe...
Count data are subject to considerable sources of what is often referred to as non-sampling error. E...
Data quality is emerging as an essential characteristics of all data driven processes. The implicati...
The Importance Sampling method is used as an alternative approach to MCMC in repeated Bayesian estim...
Misclassification of an outcome and/or covariate is present in many regression applications due to t...
Several MCMC methods have been proposed for estimating probabilities of models and associated 'model...
International audienceAbstract: The Importance Sampling method is used as an alternative approach to...
Covariate and confounder selection in case-control studies is most commonly carried out using either...
Includes bibliographical references (p. 99-101).We present interval estimation methods for comparing...
Sample size determination continues to be an important research area in statistical analysis due to ...
Includes bibliographical references (p. 106-109).Binary misclassification is a common occurrence in ...