machine learning in a random forestUncategorized

Model ensembling

Model ensembling combines multiple models to improve overall performance by leveraging diverse data patterns. Bagging trains model instances on different data bootstraps, while Boosting corrects errors sequentially. Stacking combines models using a meta-model, and Voting uses majority/average predictions. Ensembles reduce variance without significantly increasing bias, but may complicate interpretation and computational cost.

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