We describe a Bayesian approach to model selection in unsupervised learning that determines both the feature set and the number of clusters. We then evaluate this scheme (based on marginal likelihood) and one based on cross-validated likelihood. For the Bayesian scheme we derive a closed-form solution of the marginal likelihood by assuming appropriate forms of the likelihood function and prior. Extensive experiments compare these approaches and all results are verified by comparison against ground truth. In these experiments the Bayesian scheme using our objective function gave better results than cross-validation.
Graphical model selection from data embodies several difficulties. Among them, it is specially chall...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
The purpose of the present dissertation is to study model selection techniques which are specificall...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
A Bayesian-based methodology is presented which automatically penalises over-complex models being fi...
The thesis tackles the problem of uncovering hidden structures in high-dimensional data in the prese...
In this thesis, we propose new model evaluation strategies for supervised machine learning. Our main...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
In this paper, we proposed a generative graphical model for unsupervised robust feature selection. T...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
Graphical model selection from data embodies several difficulties. Among them, it is specially chall...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...
The purpose of the present dissertation is to study model selection techniques which are specificall...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
A Bayesian-based methodology is presented which automatically penalises over-complex models being fi...
The thesis tackles the problem of uncovering hidden structures in high-dimensional data in the prese...
In this thesis, we propose new model evaluation strategies for supervised machine learning. Our main...
Abstract. We consider Bayesian model selection in generalized linear models that are high-dimensiona...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
n recent years, Bayesian model updating techniques based on measured data have been applied in struc...
International audienceWe present a Bayesian model selection approach to estimate the intrinsic dimen...
In this paper, we proposed a generative graphical model for unsupervised robust feature selection. T...
Bayesian model selection is a fundamental part of the Bayesian statistical modeling process. The qua...
Graphical model selection from data embodies several difficulties. Among them, it is specially chall...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Consistent high-dimensional Bayesian variable selection via penalized credible regions For high-dime...