Named Entity Recognition on Code-Mixed Cross-Script Social Media Content



Título del documento: Named Entity Recognition on Code-Mixed Cross-Script Social Media Content
Revue: Computación y sistemas
Base de datos: PERIÓDICA
Número de sistema: 000423313
ISSN: 1405-5546
Autores: 1
1
2
1
Instituciones: 1Jadavpur University, Calcuta, Bengala Occidental. India
2Universidad Politécnica de Valencia, Valencia. España
Año:
Periodo: Oct-Dic
Volumen: 21
Número: 4
País: México
Idioma: Inglés
Tipo de documento: Artículo
Enfoque: Aplicado, descriptivo
Resumen en inglés Focusing on the current multilingual scenario in social media, this paper reports automatic extraction of named entities (NE) from code-mixed cross-script social media data. Our prime target is to extract NE for question answering. This paper also introduces a Bengali-English (Bn-En) code-mixed cross-script dataset for NE research and proposes domain specific taxonomies for NE. We used formal as well as informal language-specific features to prepare the classification models and employed four machine learning algorithms (Conditional Random Fields, Margin Infused Relaxed Algorithm, Support Vector Machine and Maximum Entropy Markov Model) for the NE recognition (NER) task. In this study, Bengali is considered as the native language while English is considered as the non-native language. However, the approach presented in this paper is generic in nature and could be used for any other code-mixed dataset. The classification models based on CRF and SVM performed well among the classifiers
Disciplinas: Ciencias de la computación,
Literatura y lingüística
Palabras clave: Lingüística aplicada,
Reconocimiento de entidades nombradas,
Mezcla de códigos,
Análisis de textos,
Redes sociales
Keyword: Applied linguistics,
Social networks,
Named entity recognition,
Code mixing,
Text analysis
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