Mention Detection for Improving Coreference Resolution in Russian Texts: A Machine Learning Approach



Document title: Mention Detection for Improving Coreference Resolution in Russian Texts: A Machine Learning Approach
Journal: Computación y sistemas
Database: PERIÓDICA
System number: 000410219
ISSN: 1405-5546
Authors: 1
2
Institutions: 1National Research Institute "Higher School of Economics", Moscú. Rusia
2Moscow State University, Rusia
Year:
Season: Oct-Dic
Volumen: 20
Number: 4
Pages: 681-696
Country: México
Language: Inglés
Document type: Artículo
Approach: Experimental, aplicado
English abstract Coreference resolution task is a well-known NLP application that was proven helpful for all high-level NLP applications: machine translation, summarization, and others. Mention detection is the sub-task of detecting the discourse status of each noun phrase, classifying it as a discourse-new, singleton (mentioned only once) or discourse-old occurrence. It has been shown that this task applied to a coreference resolution system may increase its overall performance. So, we decided to adapt current approaches for English language into Russian. We present some quality results of experiments regarding classifiers for mention detection and their application into the coreference resolution task in Russian languages
Disciplines: Ciencias de la computación,
Literatura y lingüística
Keyword: Procesamiento de datos,
Lingüística aplicada,
Procesamiento del discurso,
Procesamiento de lenguaje natural,
Aprendizaje de máquinas,
Correferencias
Keyword: Computer science,
Literature and linguistics,
Data processing,
Applied linguistics,
Discourse processing,
Natural language processing,
Machine learning,
Coreferences
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