We present a new variable selection method based on model-based gradient boosting and randomly permuted variables. Model-based boosting is a tool to fit a statistical model while performing variable selection at the same time. A drawback of the fitting lies in the need of multiple model fits on slightly altered data (e.g., cross-validation or bootstrap) to find the optimal number of boosting iterations and prevent overfitting. In our proposed approach, we augment the data set with randomly permuted versions of the true variables, so-called shadow variables, and stop the stepwise fitting as soon as such a variable would be added to the model. This allows variable selection in a single fit of the model without requiring further parameter tuni...
Developments in high-throughput technology have made multi-omics data available on a large scale. Mu...
Variable selection is a key component of regression modelling but slight changes to the initial data...
We introduce a new variable selection technique called the Permuted Inclusion Criterion (PIC) based ...
We present a new variable selection method based on model-based gradient boosting and randomly permu...
Abstract Background Statistical boosting is a computational approach to select and estimate interpre...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
This publication is with permission of the rights owner (Sage) freely accessible.We present a new pr...
<p>Most variable selection techniques for high-dimensional models are designed to be used in setting...
We propose Sparse Boosting (the SparseL 2 Boost algorithm), a variant on boosting with the squared ...
Boosting is one of the most powerful machine learning method use for modeling a univariate response....
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
Summary: The R add-on package mboost implements functional gradient descent algorithms (boosting) fo...
In high-dimensional data, penalized regression is often used for variable selection and parameter es...
As dimensions of datasets in predictive modelling continue to grow, feature selection becomes increa...
Developments in high-throughput technology have made multi-omics data available on a large scale. Mu...
Variable selection is a key component of regression modelling but slight changes to the initial data...
We introduce a new variable selection technique called the Permuted Inclusion Criterion (PIC) based ...
We present a new variable selection method based on model-based gradient boosting and randomly permu...
Abstract Background Statistical boosting is a computational approach to select and estimate interpre...
Background Modern biotechnologies often result in high-dimensional data sets with many more varia...
We present a statistical perspective on boosting. Special emphasis is given to estimating potentiall...
This publication is with permission of the rights owner (Sage) freely accessible.We present a new pr...
<p>Most variable selection techniques for high-dimensional models are designed to be used in setting...
We propose Sparse Boosting (the SparseL 2 Boost algorithm), a variant on boosting with the squared ...
Boosting is one of the most powerful machine learning method use for modeling a univariate response....
In biomedical research, boosting-based regression approaches have gained much attention in the last ...
Summary: The R add-on package mboost implements functional gradient descent algorithms (boosting) fo...
In high-dimensional data, penalized regression is often used for variable selection and parameter es...
As dimensions of datasets in predictive modelling continue to grow, feature selection becomes increa...
Developments in high-throughput technology have made multi-omics data available on a large scale. Mu...
Variable selection is a key component of regression modelling but slight changes to the initial data...
We introduce a new variable selection technique called the Permuted Inclusion Criterion (PIC) based ...