We investigate the structure of model selection problems via the bias/variance decomposition. In particular, we characterize the essential aspects of a model selection task by the bias and variance profiles it generates over the sequence of hypothesis classes. With this view, we develop a new understanding of complexity-penalization methods: First, the penalty terms can be interpreted as postulating a particular profile for the variances as a function of model complexity---if the postulated and true profiles do not match, then systematic under-fitting or over-fitting results, depending on whether the penalty terms are too large or too small. Second, we observe that it is generally best to penalize according to the true variances of the task...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
Let Z1,..., Zn be i.i.d. vectors, each consisting of a response and a few explanatory variables. Sup...
We consider complexity penalization methods for model selection. These methods aim to choose a model...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Abstract. We study model selection strategies based on penalized empirical loss minimization. We poi...
Model selection strategies for machine learning algorithms typically involve the numerical optimisat...
Model selection plays an important part in machine learning and in artificial intelligence in genera...
Models need to be complex to cope with the complexity of today’s data. Model complexity arises in pa...
When performing a regression or classification analysis, one needs to specify a statistical model. T...
In the model selection problem... The goal of this paper is to provide such a comparison, and more i...
Model selection strategies for machine learning algorithms typically involve the numerical opti-misa...
Key words and phrases. Complexity regularization, classi cation, pattern recognition, regression est...
The principle of parsimony also known as "Ockham's razor" has inspired many theories of model select...
Abstract. Performance bounds for criteria for model selection are devel-oped using recent theory for...
We consider the problem of model (or variable) selection in the classical regression model using the...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
Let Z1,..., Zn be i.i.d. vectors, each consisting of a response and a few explanatory variables. Sup...
We consider complexity penalization methods for model selection. These methods aim to choose a model...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Abstract. We study model selection strategies based on penalized empirical loss minimization. We poi...
Model selection strategies for machine learning algorithms typically involve the numerical optimisat...
Model selection plays an important part in machine learning and in artificial intelligence in genera...
Models need to be complex to cope with the complexity of today’s data. Model complexity arises in pa...
When performing a regression or classification analysis, one needs to specify a statistical model. T...
In the model selection problem... The goal of this paper is to provide such a comparison, and more i...
Model selection strategies for machine learning algorithms typically involve the numerical opti-misa...
Key words and phrases. Complexity regularization, classi cation, pattern recognition, regression est...
The principle of parsimony also known as "Ockham's razor" has inspired many theories of model select...
Abstract. Performance bounds for criteria for model selection are devel-oped using recent theory for...
We consider the problem of model (or variable) selection in the classical regression model using the...
We present a new family of model selection algorithms based on the resampling heuristics. It can be ...
Let Z1,..., Zn be i.i.d. vectors, each consisting of a response and a few explanatory variables. Sup...
We consider complexity penalization methods for model selection. These methods aim to choose a model...