Rita Pereira


2016

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QTLeap WSD/NED Corpora: Semantic Annotation of Parallel Corpora in Six Languages
Arantxa Otegi | Nora Aranberri | Antonio Branco | Jan Hajič | Martin Popel | Kiril Simov | Eneko Agirre | Petya Osenova | Rita Pereira | João Silva | Steven Neale
Proceedings of the Tenth International Conference on Language Resources and Evaluation (LREC'16)

This work presents parallel corpora automatically annotated with several NLP tools, including lemma and part-of-speech tagging, named-entity recognition and classification, named-entity disambiguation, word-sense disambiguation, and coreference. The corpora comprise both the well-known Europarl corpus and a domain-specific question-answer troubleshooting corpus on the IT domain. English is common in all parallel corpora, with translations in five languages, namely, Basque, Bulgarian, Czech, Portuguese and Spanish. We describe the annotated corpora and the tools used for annotation, as well as annotation statistics for each language. These new resources are freely available and will help research on semantic processing for machine translation and cross-lingual transfer.