作者
Andreas Mayr, Harald Binder, Olaf Gefeller, Matthias Schmid
发表日期
2014
来源
Methods of information in medicine
卷号
53
期号
06
页码范围
419-427
出版商
Schattauer GmbH
简介
Background: The concept of boosting emerged from the field of machine learning. The basic idea is to boost the accuracy of a weak classifying tool by combining various instances into a more accurate prediction. This general concept was later adapted to the field of statistical modelling. Nowadays, boosting algorithms are often applied to estimate and select predictor effects in statistical regression models.
Objectives: This review article attempts to highlight the evolution of boosting algorithms from machine learning to statistical modelling.
Methods: We describe the AdaBoost algorithm for classification as well as the two most prominent statistical boosting approaches, gradient boosting and likelihood-based boosting for statistical modelling. We highlight the methodological background and present the most common software implementations.
Results: Although gradient boosting and likelihood-based boosting are …
引用总数
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学术搜索中的文章
A Mayr, H Binder, O Gefeller, M Schmid - Methods of information in medicine, 2014