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Graph Rewriting for Enhanced Universal Dependencies

الرسم البياني إعادة كتابة التبعيات العالمية المحسنة

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 Publication date 2021
and research's language is English
 Created by Shamra Editor




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This paper describes a system proposed for the IWPT 2021 Shared Task on Parsing into Enhanced Universal Dependencies (EUD). We propose a Graph Rewriting based system for computing Enhanced Universal Dependencies, given the Basic Universal Dependencies (UD).

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