Papers by Maria Mitrofan

5 papers
BioRo: The Biomedical Corpus for the Romanian Language (L18-1)

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Challenge: Biomedical text mining uses linguistic resources available in English, but for other languages such as Romanian, the access to language resources is not straight-forward.
Approach: They present a biomedical corpus of the Romanian language, which is a valuable linguistic asset for biomedically text mining.
Outcome: The proposed corpus will be made publicly available to the biomedical text mining community . the corpus is a reference corpus for the Romanian language .
Collection and Annotation of the Romanian Legal Corpus (2020.lrec-1)

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Challenge: Currently, the corpus contains more than 140k documents representing the legislative body of Romania.
Approach: They present a Romanian legislative corpus which is a valuable linguistic asset for machine translation systems.
Outcome: The Romanian legislative corpus contains more than 140k documents representing the legislative body of Romania.
Introducing the CURLICAT Corpora: Seven-language Domain Specific Annotated Corpora from Curated Sources (2022.lrec-1)

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Challenge: The CURLICAT CEF Telecom project aims to collect and deeply annotate a set of large corpora from selected domains.
Approach: They present the results of the CURLICAT CEF Telecom project . they propose to collect and deeply annotate a set of large corpora from selected domains .
Outcome: The CURLICAT CEF Telecom project provides a set of large corpora from selected domains . the corporatized corporates are tokenized, lemmatized and morphologically analysed .
RACAI’s System at PharmaCoNER 2019 (D19-57)

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Challenge: RACAI researchers develop named entity recognition systems for Romanian language . current system is language-independent and can be improved by using language-dependent resources .
Approach: They propose to train a named entity recognition system for Romanian language . they propose to use a gazetteer-based baseline and a RNN-based NER system .
Outcome: The proposed system is language independent, provided language-dependent resources exist . the proposed system can detect entities with four labels: anatomical parts, disorders, medical procedures and chemical compounds .
The MARCELL Legislative Corpus (2020.lrec-1)

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Challenge: MARCELL corpus provides a rich and valuable source for further studies and developments in machine learning, cross-lingual terminological data extraction and classification.
Approach: They present the results of the project MARCELL CEF Telecom . they aim to collect and deeply annotate a large comparable corpus of legal documents .
Outcome: The MARCELL corpus includes 7 monolingual sub-corpora containing the body of respective national legislative documents.

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