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Sentiment analysis in Twitter

Published online by Cambridge University Press:  27 November 2012

EUGENIO MARTÍNEZ-CÁMARA
Affiliation:
Computer Science Department, University of Jaén, Campus Las Lagunillas, 23071 Jaén, Spain email: emcamara@ujaen.es, maite@ujaen.es, laurena@ujaen.es, amontejo@ujaen.es
M. TERESA MARTÍN-VALDIVIA
Affiliation:
Computer Science Department, University of Jaén, Campus Las Lagunillas, 23071 Jaén, Spain email: emcamara@ujaen.es, maite@ujaen.es, laurena@ujaen.es, amontejo@ujaen.es
L. ALFONSO UREÑA-LÓPEZ
Affiliation:
Computer Science Department, University of Jaén, Campus Las Lagunillas, 23071 Jaén, Spain email: emcamara@ujaen.es, maite@ujaen.es, laurena@ujaen.es, amontejo@ujaen.es
A RTURO MONTEJO-RÁEZ
Affiliation:
Computer Science Department, University of Jaén, Campus Las Lagunillas, 23071 Jaén, Spain email: emcamara@ujaen.es, maite@ujaen.es, laurena@ujaen.es, amontejo@ujaen.es

Abstract

In recent years, the interest among the research community in sentiment analysis (SA) has grown exponentially. It is only necessary to see the number of scientific publications and forums or related conferences to understand that this is a field with great prospects for the future. On the other hand, the Twitter boom has boosted investigation in this area due fundamentally to its potential applications in areas such as business or government intelligence, recommender systems, graphical interfaces and virtual assistance. However, to fully understand this issue, a profound revision of the state of the art is first necessary. It is for this reason that this paper aims to represent a starting point for those investigations concerned with the latest references to Twitter in SA.

Type
Articles
Copyright
Copyright © Cambridge University Press 2012 

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