Boosting Algorithms: Regularization, Prediction and Model Fitting
PBPeter BühlmannTHTorsten Hothorn
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Abstract
We present a statistical perspective on boosting. Special emphasis is given to estimating potentially complex parametric or nonparametric models, including generalized linear and additive models as well as regression models for survival analysis. Concepts of degrees of freedom and corresponding Akaike or Bayesian information criteria, particularly useful for regularization and variable selection in high-dimensional covariate spaces, are discussed as well. The practical aspects of boosting procedures for fitting statistical models are illustrated by means of the dedicated open-source software package mboost. This package implements functions which can be used for model fitting, prediction and variable…
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Authors
2- PBPeter BühlmannCorresponding
- THTorsten Hothorn
Topics & keywords
Topics
Keywords
- Boosting (machine learning)
- Akaike information criterion
- Covariate
- Model selection
- Feature selection
- Gradient boosting
- Parametric statistics
- Nonparametric statistics
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