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COSY: COunterfactual SYntax for Cross-Lingual Understanding
Speaker (s):

YU Sicheng
PhD Student
School of Computing and Information Systems
Singapore Management University
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Date:
Time:
Venue:
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15 July 2021, Thursday
1:30pm - 1:50pm
This is a virtual seminar. Please register by 13 July, the zoom link will be sent out on the following day to those who registered.
We look forward to seeing you at this research seminar.

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About the Talk
Pre-trained multilingual language models, e.g., multilingual-BERT, are widely used in cross-lingual tasks, yielding the state-of-the-art performance. However, such models suffer from a large performance gap between source and target languages, especially in the zero-shot setting, where the models are fine-tuned only on English but tested on other languages for the same task. We tackle this issue by incorporating language-agnostic information, specifically, universal syntax such as dependency relations and POS tags, into language models, based on the observation that universal syntax is transferable across different languages. Our approach, named COunterfactual SYntax~(COSY), includes the design of SYntax-aware networks as well as a COunterfactual training method to implicitly force the networks to learn not only the semantics but also the syntax. To evaluate COSY, we conduct cross-lingual experiments on natural language inference and question answering using mBERT and XLM-R as network backbones. Our results show that COSY achieves the state-of-the-art performance for both tasks, without using auxiliary dataset.
About the Speaker
Sicheng Yu received the B.E. degree in electronic and information engineering from Dalian University of Technology, China, in 2017 and M.S. degree in signal processing from Nanyang Technology University, Singapore, in 2018. Now he is pursuing the Ph.D. degree in computer science in Singapore Management University under the supervision of Prof. Jing Jiang and Prof. Qianru Sun. His research focuses on natural language processing.
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