In the context of either Bayesian or classical sensitivity analyses of over-parametrized models for incomplete categorical data, it is well known that prior-dependence on posterior inferences of nonidentifiable parameters or that too parsimonious over-parametrized models may lead to erroneous conclusions. Nevertheless, some authors either pay no attention to which parameters are nonidentifiable or do not appropriately account for possible prior-dependence. We review the literature on this topic and consider simple examples to emphasize that in both inferential frameworks, the subjective components can influence results in nontrivial ways, irrespectively of the sample size. Specifically, we show that prior distributions commonly regarded as ...
Summary: We examine situations where interest lies in the conditional association between out-come a...
In some distributions, such as the binomial distribution, the variance is deter-mined by the mean. H...
We review some issues related to the implications of different missing data mechanisms on statistica...
P>In the context of either Bayesian or classical sensitivity analyses of over-parametrized models fo...
This paper shows that econometric models that include categorical variables are not invariant to cho...
We examine situations where interest lies in the conditional association between outcome and exposur...
Count data are subject to considerable sources of what is often referred to as non-sampling error. E...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Overdispersion is a common feature ...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
Unmeasured confounding may bias the analysis of observational studies. Existing methods of adjustme...
Bayesian structural equation modeling (BSEM) has recently gained popularity because it enables resea...
Inference proceeds from ingredients chosen by the analyst and data. To validate any inferences drawn...
The effectiveness of a Bayesian approach to the estimation problem in item response models has been...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Summary: We examine situations where interest lies in the conditional association between out-come a...
In some distributions, such as the binomial distribution, the variance is deter-mined by the mean. H...
We review some issues related to the implications of different missing data mechanisms on statistica...
P>In the context of either Bayesian or classical sensitivity analyses of over-parametrized models fo...
This paper shows that econometric models that include categorical variables are not invariant to cho...
We examine situations where interest lies in the conditional association between outcome and exposur...
Count data are subject to considerable sources of what is often referred to as non-sampling error. E...
Abstract: Count data are subject to considerable sources of what is often referred to as non-samplin...
© 2022 Informa UK Limited, trading as Taylor & Francis Group.Overdispersion is a common feature ...
In contrast to a posterior analysis given a particular sampling model, posterior model probabilities...
Unmeasured confounding may bias the analysis of observational studies. Existing methods of adjustme...
Bayesian structural equation modeling (BSEM) has recently gained popularity because it enables resea...
Inference proceeds from ingredients chosen by the analyst and data. To validate any inferences drawn...
The effectiveness of a Bayesian approach to the estimation problem in item response models has been...
Systematic error due to possible unmeasured confounding may weaken the validity of findings from ob...
Summary: We examine situations where interest lies in the conditional association between out-come a...
In some distributions, such as the binomial distribution, the variance is deter-mined by the mean. H...
We review some issues related to the implications of different missing data mechanisms on statistica...