The bootstrap is a tool that allows for efficient evaluation of prediction performance of statistical techniques without having to set aside data for validation. This is especially important for high-dimensional data, e.g., arising from microarrays, because there the number of observations is often limited. For avoiding overoptimism the statistical technique to be evaluated has to be applied to every bootstrap sample in the same manner it would be used on new data. This includes a selection of complexity, e.g., the number of boosting steps for gradient boosting algorithms. Using the latter, we demonstrate in a simulation study that complexity selection in conventional bootstrap samples, drawn with replacement, is severely biased in many sce...
Nearest Neighbour (NN) propensity score (PS) matching methods are commonly used in pharmacoepidemio...
In public health and in applied research in general, analysts frequently use automated variable sele...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
There are several techniques for fitting sparse survival models to high-dimensional data, arising e....
Motivation: In genomic studies, thousands of features are collected on relatively few samples. One o...
The bootstrap method has become a widely used tool applied in diverse areas where results based on a...
Robust model selection procedures control the undue influence that outliers can have on the selectio...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
Robust model selection procedures control the undue influence that outliers can have on the selectio...
Background: Data generated using ‘omics’ technologies are characterized by high dimensionality, wher...
In genomic studies, thousands of features are collected on relatively few samples. One of the goals ...
AbstractAn empirical method of sample size determination for building prediction models was proposed...
Abstract The bootstrap has become a popular method for exploring model(structure) uncertainty. Our e...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
The bootstrap provides a simple and powerful means of assessing the quality of estimators. How-ever,...
Nearest Neighbour (NN) propensity score (PS) matching methods are commonly used in pharmacoepidemio...
In public health and in applied research in general, analysts frequently use automated variable sele...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
There are several techniques for fitting sparse survival models to high-dimensional data, arising e....
Motivation: In genomic studies, thousands of features are collected on relatively few samples. One o...
The bootstrap method has become a widely used tool applied in diverse areas where results based on a...
Robust model selection procedures control the undue influence that outliers can have on the selectio...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
Robust model selection procedures control the undue influence that outliers can have on the selectio...
Background: Data generated using ‘omics’ technologies are characterized by high dimensionality, wher...
In genomic studies, thousands of features are collected on relatively few samples. One of the goals ...
AbstractAn empirical method of sample size determination for building prediction models was proposed...
Abstract The bootstrap has become a popular method for exploring model(structure) uncertainty. Our e...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
The bootstrap provides a simple and powerful means of assessing the quality of estimators. How-ever,...
Nearest Neighbour (NN) propensity score (PS) matching methods are commonly used in pharmacoepidemio...
In public health and in applied research in general, analysts frequently use automated variable sele...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...