Difference between revisions of "Bagging"

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== Summary ==
 
== Summary ==
  
Bagging (a.k.a '''b'''ootstrap '''agg'''regat'''ing''') is an ensemble machine learning [[category::method]] for classification and regression, which generates multiple versions of a predictor, by making bootstrap replications of the learning set and using them as the new learning set, and uses them to produce an aggregated predictor, which does voting over the different versions for classification and averages outcomes when predicting numerical values.
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Bagging (a.k.a '''b'''ootstrap '''agg'''regat'''ing''') is an ensemble machine learning [[category::method]] introduced by Leo Brieman for classification and regression, which generates multiple versions of a predictor, by making bootstrap replications of the learning set and using them as the new learning set, and uses them to produce an aggregated predictor, which does voting over the different versions for classification and averages outcomes when predicting numerical values. Brieman showed that bagging can best improve accuracy when the predictors are good but unstable (when perturbing the learning set results in significant changes in the predictors).
  
== Method ==
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== Procedure ==
 
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Revision as of 18:00, 30 November 2010

Summary

Bagging (a.k.a bootstrap aggregating) is an ensemble machine learning method introduced by Leo Brieman for classification and regression, which generates multiple versions of a predictor, by making bootstrap replications of the learning set and using them as the new learning set, and uses them to produce an aggregated predictor, which does voting over the different versions for classification and averages outcomes when predicting numerical values. Brieman showed that bagging can best improve accuracy when the predictors are good but unstable (when perturbing the learning set results in significant changes in the predictors).

Procedure

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References / Links

Relevant Papers