articleJan 1, 2007Closed access

Classification and Regression by randomForest

Abstract

Recently there has been a lot of interest in “ensemble learning” — methods that generate many classifiers and aggregate their results. Two well-known methods are boosting (see, e.g., Shapire et al., 1998) and bagging Breiman (1996) of classification trees. In boosting, successive trees give extra weight to points incorrectly predicted by earlier predictors. In the end, a weighted vote is taken for prediction. In bagging, successive trees do not depend on earlier trees — each is independently constructed using a bootstrap sample of the data set. In the end, a simple majority vote is taken for prediction. Breiman (2001) proposed random forests, which add an additional layer of randomness to bagging. In addition…

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Topics & keywords

Keywords
  • Random forest
  • Boosting (machine learning)
  • Overfitting
  • Artificial intelligence
  • Computer science
  • Mathematics
  • Machine learning
  • Statistics
UN Sustainable Development Goals
  • Reduced inequalities
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