In Bayesian statistics, one's prior beliefs about underlying model parameters are revised with the information content of observed data from which, using Bayes' rule, a posterior belief is obtained. A non-trivial example taken from the isospin analysis of B->PP (P = pi or rho) decays in heavy-flavor physics is chosen to illustrate the effect of the naive "objective" choice of flat priors in a multi-dimensional parameter space in presence of mirror solutions. It is demonstrated that the posterior distribution for the parameter of interest, the phase alpha strongly depends on the choice of the parameterization in which the priors are uniform, and on the validity range in which the (un-normalizable) priors are truncated. We prove that the most...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
Research Doctorate - Doctor of Philosophy (PhD)Interval estimation of the Binomial parameter è, repr...
Inference from limited data requires a notion of measure on parameter space, which is most explicit ...
In Bayesian statistics, one's prior beliefs about underlying model parameters are revised with the i...
17 pages, 10 figuresIn Bayesian statistics, one's prior beliefs about underlying model parameters ar...
In contrast to previous analyses, we demonstrate a Bayesian approach to the estimation of the CKM ph...
In contrast to previous analyses, we demonstrate a Bayesian approach to the estimation of the CKM ph...
Bayesian inference --- although becoming popular in physics and chemistry --- is hampered up to now ...
In reply to hep-ph/0701204 we demonstrate why the arguments made therein do not address the criticis...
This paper is concerned with the construction of prior probability measures for parametric families ...
5 pages, 1 figure. Fig. 1 corrected (wrong file)In reply to hep-ph/0701204 we demonstrate why the ar...
In a Bayesian analysis the statistician must specify prior densities for the model parameters. If he...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
We marshall the arguments for preferring Bayesian hypothesis testing and confidence sets to frequent...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
Research Doctorate - Doctor of Philosophy (PhD)Interval estimation of the Binomial parameter è, repr...
Inference from limited data requires a notion of measure on parameter space, which is most explicit ...
In Bayesian statistics, one's prior beliefs about underlying model parameters are revised with the i...
17 pages, 10 figuresIn Bayesian statistics, one's prior beliefs about underlying model parameters ar...
In contrast to previous analyses, we demonstrate a Bayesian approach to the estimation of the CKM ph...
In contrast to previous analyses, we demonstrate a Bayesian approach to the estimation of the CKM ph...
Bayesian inference --- although becoming popular in physics and chemistry --- is hampered up to now ...
In reply to hep-ph/0701204 we demonstrate why the arguments made therein do not address the criticis...
This paper is concerned with the construction of prior probability measures for parametric families ...
5 pages, 1 figure. Fig. 1 corrected (wrong file)In reply to hep-ph/0701204 we demonstrate why the ar...
In a Bayesian analysis the statistician must specify prior densities for the model parameters. If he...
A key sticking point of Bayesian analysis is the choice of prior distribution, and there is a vast l...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
We marshall the arguments for preferring Bayesian hypothesis testing and confidence sets to frequent...
With the advent of high-performance computing, Bayesian methods are becoming increasingly popular to...
Research Doctorate - Doctor of Philosophy (PhD)Interval estimation of the Binomial parameter è, repr...
Inference from limited data requires a notion of measure on parameter space, which is most explicit ...