Bayesian model selection is a tool for deciding whether the introduction of a new parameter is warranted by the data. I argue that the usual sampling statistic significance tests for a null hypothesis can be misleading, since they do not take into account the information gained through the data, when updating the prior distribution to the posterior. In contrast, Bayesian model selection offers a quantitative implementation of Occam's razor. I introduce the Savage-Dickey density ratio, a computationally quick method to determine the Bayes factor of two nested models and hence perform model selection. As an illustration, I consider three key parameters for our understanding of the cosmological concordance model. By using Wilkinson Microwave A...
We present a Bayesian model selection analysis of WMAP3 data using our code CosmoNest. We focus on t...
Interpretation of cosmological data to determine the number and values of parameters describing the ...
Bayesian evidence is a key tool in model selection, allowing a comparison of models with different n...
Model selection aims to determine which theoretical models are most plausible given some data, witho...
Model selection aims to determine which theoretical models are most plausible given some data, witho...
Bayesian model selection provides a formal method of determining the level of support for new parame...
I present a new procedure to forecast the Bayes factor of a future observation by computing the pred...
A key science goal of upcoming dark energy surveys is to seek time-evolution of the dark energy. Thi...
The standard Bayesian model formalism comparison cannot be applied to most cosmological models as th...
Present cosmological data are well explained assuming purely adiabatic perturbations, but an admixtu...
We use Bayesian model selection techniques to test extensions of the standard flat Λ cold dark matte...
Cosmological parameter uncertainties are often stated assuming a particular model, neglecting the mo...
These notes aim at presenting an overview of Bayesian statistics, the underlying concepts and applic...
We use Bayesian model selection techniques to test extensions of the standard flat ΛCDM paradigm. Da...
Model selection is the problem of distinguishing competing models, perhaps featuring different numbe...
We present a Bayesian model selection analysis of WMAP3 data using our code CosmoNest. We focus on t...
Interpretation of cosmological data to determine the number and values of parameters describing the ...
Bayesian evidence is a key tool in model selection, allowing a comparison of models with different n...
Model selection aims to determine which theoretical models are most plausible given some data, witho...
Model selection aims to determine which theoretical models are most plausible given some data, witho...
Bayesian model selection provides a formal method of determining the level of support for new parame...
I present a new procedure to forecast the Bayes factor of a future observation by computing the pred...
A key science goal of upcoming dark energy surveys is to seek time-evolution of the dark energy. Thi...
The standard Bayesian model formalism comparison cannot be applied to most cosmological models as th...
Present cosmological data are well explained assuming purely adiabatic perturbations, but an admixtu...
We use Bayesian model selection techniques to test extensions of the standard flat Λ cold dark matte...
Cosmological parameter uncertainties are often stated assuming a particular model, neglecting the mo...
These notes aim at presenting an overview of Bayesian statistics, the underlying concepts and applic...
We use Bayesian model selection techniques to test extensions of the standard flat ΛCDM paradigm. Da...
Model selection is the problem of distinguishing competing models, perhaps featuring different numbe...
We present a Bayesian model selection analysis of WMAP3 data using our code CosmoNest. We focus on t...
Interpretation of cosmological data to determine the number and values of parameters describing the ...
Bayesian evidence is a key tool in model selection, allowing a comparison of models with different n...