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Difference-Masking: Choosing What to Mask in Continued Pretraining

Difference-Masking strategy enhances continued pretraining performance by automatically determining mask targets based on task domain differences.

Year
2023
Venue
arXiv 2023
Authors
8
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arxiv.org/abs/2305.14577v2ARXIV-DEFAULT
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Abstract

The self-supervised objective of masking-and-predicting has led to promising performance gains on a variety of downstream tasks. However, while most approaches randomly mask tokens, there is strong intuition that deciding what to mask can substantially improve learning outcomes. We investigate this in continued pretraining setting in which pretrained models continue to pretrain on domain-specific data before performing some downstream task. We introduce Difference-Masking, a masking strategy that automatically chooses what to mask during continued pretraining by considering what makes a task domain different from the pretraining domain. Empirically, we find that Difference-Masking outperforms baselines on continued pretraining settings across four diverse language-only and multimodal video tasks.

Authors

8