Diverse Lottery Tickets Boost Ensemble from a Single Pretrained Model
2022-05-24BigScience (ACL) 2022Unverified0· sign in to hype
Sosuke Kobayashi, Shun Kiyono, Jun Suzuki, Kentaro Inui
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Ensembling is a popular method used to improve performance as a last resort. However, ensembling multiple models finetuned from a single pretrained model has been not very effective; this could be due to the lack of diversity among ensemble members. This paper proposes Multi-Ticket Ensemble, which finetunes different subnetworks of a single pretrained model and ensembles them. We empirically demonstrated that winning-ticket subnetworks produced more diverse predictions than dense networks, and their ensemble outperformed the standard ensemble on some tasks.