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arxiv: 2010.03424 · v2 · pith:6O2NZGWQnew · submitted 2020-10-07 · 💻 cs.CL

Cross-lingual Extended Named Entity Classification of Wikipedia Articles

classification 💻 cs.CL
keywords cross-lingualbestclassificationlanguageslevelmethodmodelable
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The FPT.AI team participated in the SHINRA2020-ML subtask of the NTCIR-15 SHINRA task. This paper describes our method to solving the problem and discusses the official results. Our method focuses on learning cross-lingual representations, both on the word level and document level for page classification. We propose a three-stage approach including multilingual model pre-training, monolingual model fine-tuning and cross-lingual voting. Our system is able to achieve the best scores for 25 out of 30 languages; and its accuracy gaps to the best performing systems of the other five languages are relatively small.

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