ml:ensembling
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Table of Contents
Ensembling
Ensembling models trained with different random seeds always improves performance. It is often used in competitions like WMT. However, in papers, because it always gives an improvement, researchers usually compare non-ensembling methods to other non-ensembled methods, and ensembled methods to ensembled methods. See for example of this see Gehring et al 2017.
Overviews
Theory
ml/ensembling.1635510485.txt.gz · Last modified: 2023/06/15 07:36 (external edit)