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M. Vicente, Batista, F. & João P. Carvalho (2016). Improving Twitter gender classification using multiple classifiers. Proc. of the 8th European Symposium on Computational Intelligence and Mathematics (ESCIM 2016). 121-127
M. Vicente et al., "Improving Twitter gender classification using multiple classifiers", in Proc. of the 8th European Symp. on Computational Intelligence and Mathematics (ESCIM 2016), Sofia, Bulgaria, pp. 121-127, 2016
@misc{vicente2016_1766520405993,
author = "M. Vicente and Batista, F. and João P. Carvalho",
title = "Improving Twitter gender classification using multiple classifiers",
year = "2016",
howpublished = "Ambos (impresso e digital)",
url = "http://escim2016.uca.es/wp-content/uploads/2016/10/ESCIM-2016-Proceedings.pdf"
}
TY - CPAPER TI - Improving Twitter gender classification using multiple classifiers T2 - Proc. of the 8th European Symposium on Computational Intelligence and Mathematics (ESCIM 2016) AU - M. Vicente AU - Batista, F. AU - João P. Carvalho PY - 2016 SP - 121-127 CY - Sofia, Bulgaria UR - http://escim2016.uca.es/wp-content/uploads/2016/10/ESCIM-2016-Proceedings.pdf AB - The user profile information is important for many studies, but essential information, such as gender and age, is not provided when creating a Twitter account. However, clues about the user profile, such as the age and gender, behaviors, and preferences, can be extracted from other content provided by the user. The main focus of this paper is to infer the gender of the user from unstructured information, including the username, screen name, description and picture, or by the user generated content. Our experiments use an English labelled dataset containing 6.5M tweets from 65K users, and a Portuguese labelled dataset containing 5.8M tweets from 58K users. We use supervised approaches, considering four groups of features extracted from different sources: user name and screen name, user description, content of the tweets, and profile picture. A final classifier that combines the prediction of each one of the four previous partial classifiers achieves 93.2% accuracy for English and 96.9% accuracy for Portuguese data. ER -
English