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Model soups: averaging weights of multiple fine-tuned models improves accuracy without increasing inference time

Papers Read on AI

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Ensemble Studies and Model Soups

This chapter delves into the effectiveness of ensembles in achieving high accuracy under distribution shift, showcasing Mustafa et al.'s method of identifying subsets of pre-trained models for fine-tuning. It also discusses how Gontio Lopez et al.'s large-scale study indicates that higher divergence in training methods results in improved ensemble accuracy.

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