MultiMWE: Building a Multi-lingual Multi-Word Expression (MWE) Parallel Corpora
May 21, 2020 ยท Declared Dead ยท ๐ International Conference on Language Resources and Evaluation
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Authors
Lifeng Han, Gareth J. F. Jones, Alan F. Smeaton
arXiv ID
2005.10583
Category
cs.CL: Computation & Language
Citations
16
Venue
International Conference on Language Resources and Evaluation
Last Checked
4 months ago
Abstract
Multi-word expressions (MWEs) are a hot topic in research in natural language processing (NLP), including topics such as MWE detection, MWE decomposition, and research investigating the exploitation of MWEs in other NLP fields such as Machine Translation. However, the availability of bilingual or multi-lingual MWE corpora is very limited. The only bilingual MWE corpora that we are aware of is from the PARSEME (PARSing and Multi-word Expressions) EU Project. This is a small collection of only 871 pairs of English-German MWEs. In this paper, we present multi-lingual and bilingual MWE corpora that we have extracted from root parallel corpora. Our collections are 3,159,226 and 143,042 bilingual MWE pairs for German-English and Chinese-English respectively after filtering. We examine the quality of these extracted bilingual MWEs in MT experiments. Our initial experiments applying MWEs in MT show improved translation performances on MWE terms in qualitative analysis and better general evaluation scores in quantitative analysis, on both German-English and Chinese-English language pairs. We follow a standard experimental pipeline to create our MultiMWE corpora which are available online. Researchers can use this free corpus for their own models or use them in a knowledge base as model features.
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