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An update on statistical boosting in biomedicine

Authors :
Mayr, Andreas
Hofner, Benjamin
Waldmann, Elisabeth
Hepp, Tobias
Gefeller, Olaf
Schmid, Matthias
Publication Year :
2017

Abstract

Statistical boosting algorithms have triggered a lot of research during the last decade. They combine a powerful machine-learning approach with classical statistical modelling, offering various practical advantages like automated variable selection and implicit regularization of effect estimates. They are extremely flexible, as the underlying base-learners (regression functions defining the type of effect for the explanatory variables) can be combined with any kind of loss function (target function to be optimized, defining the type of regression setting). In this review article, we highlight the most recent methodological developments on statistical boosting regarding variable selection, functional regression and advanced time-to-event modelling. Additionally, we provide a short overview on relevant applications of statistical boosting in biomedicine.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1702.08185
Document Type :
Working Paper