Title of article
Probing for Sparse and Fast Variable Selection with Model-Based Boosting
Author/Authors
Thomas, Janek Department of Statistics - LMU Munchen - Munchen, Germany , Hepp, Tobias Department of Medical Informatics - Biometry and Epidemiology - FAU Erlangen-Nurnberg - Erlangen, Germany , Mayr, Andreas Department of Medical Informatics - Biometry and Epidemiology - FAU Erlangen-Nurnberg - Erlangen, Germany , Bischl, Bernd Department of Statistics - LMU Munchen - Munchen, Germany
Pages
8
From page
1
To page
8
Abstract
We present a new variable selection method based on model-based gradient boosting and randomly permuted variables. Modelbased 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 tuning. We show that our
probing approach can compete with state-of-the-art selection methods like stability selection in a high-dimensional classification
benchmark and apply it on three gene expression data sets.
Keywords
Boosting , Model-Based , Selection
Journal title
Computational and Mathematical Methods in Medicine
Serial Year
2017
Full Text URL
Record number
2608228
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