Deep Learning Ensembling Flashcards

1
Q

Bagging, Boosting, Stacking

A

Bagging (Bootstrap Aggregation): Multiple subsets (sampling with replacement) -> multiple classifiers –> majority votes. Decreases variance, e.g., random forest

Boosting: Sequential, after each stage adjust the weight of samples

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2
Q

Bootstrapping

A

Sample multiple sub-sets with replacement

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