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arxiv: 2302.13201 · v1 · pith:SE44UEN4new · submitted 2023-02-26 · 💻 cs.CL

CLICKER: Attention-Based Cross-Lingual Commonsense Knowledge Transfer

classification 💻 cs.CL
keywords commonsenseknowledgelanguagesclickercross-lingualenglishattention-basedmptms
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Recent advances in cross-lingual commonsense reasoning (CSR) are facilitated by the development of multilingual pre-trained models (mPTMs). While mPTMs show the potential to encode commonsense knowledge for different languages, transferring commonsense knowledge learned in large-scale English corpus to other languages is challenging. To address this problem, we propose the attention-based Cross-LIngual Commonsense Knowledge transfER (CLICKER) framework, which minimizes the performance gaps between English and non-English languages in commonsense question-answering tasks. CLICKER effectively improves commonsense reasoning for non-English languages by differentiating non-commonsense knowledge from commonsense knowledge. Experimental results on public benchmarks demonstrate that CLICKER achieves remarkable improvements in the cross-lingual CSR task for languages other than English.

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