The model selection procedure is usually a single-criterion decision making in which we select the model that maximizes a specific metric in a specific set, such as the Validation set performance. We claim this is very naive and can perform poor selections of over-fitted models due to the over-searching phenomenon, which over-estimates the performance on that specific set. Futhermore, real world data contains noise that should not be ignored by the model selection procedure and must be taken into account when performing model selection. Also, we have defined four theoretical optimality conditions that we can pursue to better select the models and analyze them by using a multi-criteria decision-making algorithm (TOPSIS) that considers proxie...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Modern data-driven statistical techniques, e.g., non-linear classification and regression machine ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
Model selection strategies for machine learning algorithms typically involve the numerical optimisat...
Model selection strategies for machine learning algorithms typically involve the numerical opti-misa...
Model selection is a necessary step in unsupervised machine learning. Despite numerous criteria and ...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Model selection plays an important part in machine learning and in artificial intelligence in genera...
Due to the prevalence of machine learning algorithms and the potential for their decisions to profou...
This paper introduces Perturbed Model Validation (PMV), a new technique to validate model relevance ...
Breakthroughs in machine learning are rapidly changing science and society, yet our fundamental unde...
A la suite de la conférence ESANN 2000.International audienceBootstrap techniques (also called resam...
Experts classifying data are often imprecise. Recently, several models have been proposed to train c...
When evaluating the performance of clinical machine learning models, one must consider the deploymen...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Modern data-driven statistical techniques, e.g., non-linear classification and regression machine ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...
Model selection strategies for machine learning algorithms typically involve the numerical optimisat...
Model selection strategies for machine learning algorithms typically involve the numerical opti-misa...
Model selection is a necessary step in unsupervised machine learning. Despite numerous criteria and ...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Data analysis usually aims to identify a particular signal, such as an intervention effect. Conventi...
Model selection plays an important part in machine learning and in artificial intelligence in genera...
Due to the prevalence of machine learning algorithms and the potential for their decisions to profou...
This paper introduces Perturbed Model Validation (PMV), a new technique to validate model relevance ...
Breakthroughs in machine learning are rapidly changing science and society, yet our fundamental unde...
A la suite de la conférence ESANN 2000.International audienceBootstrap techniques (also called resam...
Experts classifying data are often imprecise. Recently, several models have been proposed to train c...
When evaluating the performance of clinical machine learning models, one must consider the deploymen...
We study model selection strategies based on penalized empirical loss minimization. We point out a...
Modern data-driven statistical techniques, e.g., non-linear classification and regression machine ...
Applying machine learning to real problems is non-trivial because many important steps are needed to...