Use of noninformative priors with the Posterior Predictive Checks (PPC) method requires more attention. Previous research of the PPC has treated noninformative priors as always noninformative in relation to the likelihood, regardless of model-data fit. However, as model-data fit deteriorates, and the steepness of the likelihood's curvature diminishes, the prior can become more informative than initially intended. The objective of this dissertation was to investigate whether specification of the prior distribution has an effect on the conclusions drawn from the PPC method. Findings indicated that the choice of discrepancy measure is an important factor in the overall success of the method, and that different discrepancy measures are affected...
Bayesian nonparametric (BNP or NP Bayes) methods have enjoyed great strides forward in recent years....
If data exhibit a dimensional structure more complex than what is assumed, key conditional independe...
In this paper we analyze the effect of four possible alternatives regarding the prior distributions ...
My dissertation examines two kinds of statistical tools for taking prior information into account, a...
abstract: Although models for describing longitudinal data have become increasingly sophisticated, t...
Model comparison and hypothesis testing is an integral part of all data analyses. In this thesis, I ...
Bayesian model criticism is an important part of the practice of Bayesian statistics. Traditionally,...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
When doing a Bayesian Analysis for a replication study, selecting priors is a widely discussed issue...
Bayesian modeling helps applied researchers articulate assumptions about their data and develop mode...
While some improper priors have attractive properties, it is generally claimed that Bartlett’s parad...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
This thesis presents a set of methods unified around the theme of providing valid inference when dat...
15 pages, 8 figures, 5 tablesFollowing the critical review of Seaman et al. (2012), we reflect on wh...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
Bayesian nonparametric (BNP or NP Bayes) methods have enjoyed great strides forward in recent years....
If data exhibit a dimensional structure more complex than what is assumed, key conditional independe...
In this paper we analyze the effect of four possible alternatives regarding the prior distributions ...
My dissertation examines two kinds of statistical tools for taking prior information into account, a...
abstract: Although models for describing longitudinal data have become increasingly sophisticated, t...
Model comparison and hypothesis testing is an integral part of all data analyses. In this thesis, I ...
Bayesian model criticism is an important part of the practice of Bayesian statistics. Traditionally,...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
When doing a Bayesian Analysis for a replication study, selecting priors is a widely discussed issue...
Bayesian modeling helps applied researchers articulate assumptions about their data and develop mode...
While some improper priors have attractive properties, it is generally claimed that Bartlett’s parad...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
This thesis presents a set of methods unified around the theme of providing valid inference when dat...
15 pages, 8 figures, 5 tablesFollowing the critical review of Seaman et al. (2012), we reflect on wh...
Research makes the greatest progress when it makes use of the results and insights of others. This d...
Bayesian nonparametric (BNP or NP Bayes) methods have enjoyed great strides forward in recent years....
If data exhibit a dimensional structure more complex than what is assumed, key conditional independe...
In this paper we analyze the effect of four possible alternatives regarding the prior distributions ...