The principle of parsimony also known as "Ockham's razor" has inspired many theories of model selection. Yet such theories, all making arguments in favor of parsimony, are based on very different premises and have developed distinct methodologies to derive algorithms. We have organized challenges and edited a special issue of JMLR and several conference proceedings around the theme of model selection. In this editorial, we revisit the problem of avoiding overfitting in light of the latest results. We note the remarkable convergence of theories as different as Bayesian theory, Minimum Description Length, bias/variance tradeoff, Structural Risk Minimization, and regularization, in some approaches. We also present new and interesting examples ...
Investigators interested in model order estimation have tended to divide themselves into widely sep...
Model selection is an important part of any statistical analysis, and indeed is central to the pursu...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
Model selection has become an ubiquitous statistical activity in the last decades, none the least du...
Information-theoretic approaches to model selection, such as Akaike's information criterion (AIC) an...
Sparsity or parsimony of statistical models is crucial for their proper interpretations, as in scie...
We investigate the structure of model selection problems via the bias/variance decomposition. In par...
Model selection plays an important part in machine learning and in artificial intelligence in genera...
Abstract. Bayesian methods- either based on Bayes Factors or BIC- are now widely used for model sele...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Bayesian model averaging, model selection and their approximations such as BIC are generally statist...
Investigators interested in model order estimation have tended to divide themselves into widely sep...
Model selection is an important part of any statistical analysis, and indeed is central to the pursu...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...
We discuss model selection, both from a Bayes and Classical point of view. Our presentation introduc...
Modern statistical software and machine learning libraries are enabling semi-automated statistical i...
In the era of big data, analysts usually explore various statistical models or machine-learning meth...
The goal of this paper is to compare several widely used Bayesian model selection methods in practic...
Model selection has become an ubiquitous statistical activity in the last decades, none the least du...
Information-theoretic approaches to model selection, such as Akaike's information criterion (AIC) an...
Sparsity or parsimony of statistical models is crucial for their proper interpretations, as in scie...
We investigate the structure of model selection problems via the bias/variance decomposition. In par...
Model selection plays an important part in machine learning and in artificial intelligence in genera...
Abstract. Bayesian methods- either based on Bayes Factors or BIC- are now widely used for model sele...
<p>Bayesian variable selection often assumes normality, but the effects of model misspecification ar...
Bayesian model averaging, model selection and their approximations such as BIC are generally statist...
Investigators interested in model order estimation have tended to divide themselves into widely sep...
Model selection is an important part of any statistical analysis, and indeed is central to the pursu...
In this article, we introduce the concept of model uncertainty.We review the frequentist and Bayesia...