We present a careful derivation of the Bayesian Inference Criterion (BIC) for model selection. The BIC is viewed here as an approximation to the Bayes Factor. One of the main ingredients in the approximation, the use of Laplace’s method for approximating integrals, is explained well in the literature. Our derivation sheds light on this and other steps in the derivation, such as the use of a flat prior and the invocation of the weak law of large numbers, that are not often discussed in detail.
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
Bayes factors (BFs) play an important role in comparing the fit of statistical models. However, comp...
It is a relatively well-known fact that in problems of Bayesian model selection, improper priors sho...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
This paper presents a refinement of the Bayesian Information Criterion (BIC). While the original BIC...
The BIC can be viewed as an easily computable proxy to fully Bayesian model choice, which is conduct...
The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to th...
We present a new approach to model selection and Bayes factor determination, based on Laplace expans...
We consider approximate Bayesian model choice for model selection problems that involve models whose...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
Abstract. We study BIC-like model selection criteria and in particular, their refinements that inclu...
Selecting between competing structural equation models is a common problem. Often selection is based...
In both cases, the number of parameters in the BIC formula is the the number of singular vectors ret...
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
Bayes factors (BFs) play an important role in comparing the fit of statistical models. However, comp...
It is a relatively well-known fact that in problems of Bayesian model selection, improper priors sho...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
This paper presents a refinement of the Bayesian Information Criterion (BIC). While the original BIC...
The BIC can be viewed as an easily computable proxy to fully Bayesian model choice, which is conduct...
The widely applicable Bayesian information criterion (WBIC) is a simple and fast approximation to th...
We present a new approach to model selection and Bayes factor determination, based on Laplace expans...
We consider approximate Bayesian model choice for model selection problems that involve models whose...
This chapter provides a overview of Bayesian inference, mostly emphasising that it is a universal me...
Abstract. We study BIC-like model selection criteria and in particular, their refinements that inclu...
Selecting between competing structural equation models is a common problem. Often selection is based...
In both cases, the number of parameters in the BIC formula is the the number of singular vectors ret...
In this paper we review the concepts of Bayesian evidence and Bayes factors, also known as log odds ...
This is a 20 page chapter for the upcoming Handbook of Statistical Systems Biology (D. Balding, M. S...
The ordinary Bayes information criterion is too liberal for model selection when the model space is ...
Bayes factors (BFs) play an important role in comparing the fit of statistical models. However, comp...
It is a relatively well-known fact that in problems of Bayesian model selection, improper priors sho...