ARTÍCULO
TITULO

Sentiment polarity classification of tweets using a extended dictionary

Jorge E. Camargo    
Vladimir Vargas-Calderon    
Nelson Vargas    
Liliana Calderón-Benavides    

Resumen

With the purpose of classifying text based on its sentiment polarity (positive or negative), we proposed an extension of a 68,000 tweets corpus through the inclusion of word definitions from a dictionary of the Real Academia Espa\~{n}ola de la Lengua (RAE). A set of 28,000 combinations of 6 Word2Vec and support vector machine parameters were considered in order to evaluate how positively would affect the inclusion of a RAE's dictionary definitions classification performance. We found that such a corpus extension significantly improve the classification accuracy. Therefore, we conclude that the inclusion of a RAE's dictionary increases the semantic relations learned by Word2Vec allowing a better classification accuracy.

PÁGINAS
pp. 1 - 12
REVISTAS SIMILARES

 Artículos similares