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Enhancing Transformer with Sememe Knowledge

2020-07-01WS 2020Unverified0· sign in to hype

Yuhui Zhang, Chenghao Yang, Zhengping Zhou, Zhiyuan Liu

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Abstract

While large-scale pretraining has achieved great success in many NLP tasks, it has not been fully studied whether external linguistic knowledge can improve data-driven models. In this work, we introduce sememe knowledge into Transformer and propose three sememe-enhanced Transformer models. Sememes, by linguistic definition, are the minimum semantic units of language, which can well represent implicit semantic meanings behind words. Our experiments demonstrate that introducing sememe knowledge into Transformer can consistently improve language modeling and downstream tasks. The adversarial test further demonstrates that sememe knowledge can substantially improve model robustness.

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