With the advent of high-performance computing, Bayesian methods are becoming increasingly popular tools for the quantification of uncertainty throughout science and industry. Since these methods can impact the making of sometimes critical decisions in increasingly complicated contexts, the sensitivity of their posterior conclusions with respect to the underlying models and prior beliefs is a pressing question to which there currently exist positive and negative answers. We report new results suggesting that, although Bayesian methods are robust when the number of possible outcomes is finite or when only a finite number of marginals of the data-generating distribution are unknown, they could be generically brittle when applied to continuous ...
A central claim of Jones & Love's (J&L's) article is that Bayesian Fundamentalism is empirically unc...
Here a new class of local separation measures over prior densities is studied and their usefulness ...
AbstractIn the current discussion about the capacity of Bayesianism in reasoning under uncertainty, ...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
We derive, in the classical framework of Bayesian sensitivity analysis, optimal lower and upper boun...
Although it is known that Bayesian estimators may fail to converge or may con-verge towards the wron...
The practical implementation of Bayesian inference requires numerical approximation when closed-form...
We develop a framework for quantifying the sensitivity of the distribution of pos-terior distributio...
The importance of posterior consistency in the robustness of Bayesian analysis is examined and discu...
This paper presents a new asymptotic approach to study the robustness of Bayesian inference to chang...
AbstractRecent results concerning the instability of Bayes Factor search over Bayesian Networks (BN’...
This paper compares Bayesian decision theory with robust decision theory where the decision maker op...
This paper compares Bayesian decision theory with robust decision theory where the decision maker op...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
A central claim of Jones & Love's (J&L's) article is that Bayesian Fundamentalism is empirically unc...
Here a new class of local separation measures over prior densities is studied and their usefulness ...
AbstractIn the current discussion about the capacity of Bayesianism in reasoning under uncertainty, ...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
We derive, in the classical framework of Bayesian sensitivity analysis, optimal lower and upper boun...
Although it is known that Bayesian estimators may fail to converge or may con-verge towards the wron...
The practical implementation of Bayesian inference requires numerical approximation when closed-form...
We develop a framework for quantifying the sensitivity of the distribution of pos-terior distributio...
The importance of posterior consistency in the robustness of Bayesian analysis is examined and discu...
This paper presents a new asymptotic approach to study the robustness of Bayesian inference to chang...
AbstractRecent results concerning the instability of Bayes Factor search over Bayesian Networks (BN’...
This paper compares Bayesian decision theory with robust decision theory where the decision maker op...
This paper compares Bayesian decision theory with robust decision theory where the decision maker op...
Decision theory is a cornerstone of Statistics, providing a principled framework in which to act und...
A central claim of Jones & Love's (J&L's) article is that Bayesian Fundamentalism is empirically unc...
Here a new class of local separation measures over prior densities is studied and their usefulness ...
AbstractIn the current discussion about the capacity of Bayesianism in reasoning under uncertainty, ...