Carlos Pérez Estruch


2017

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Learning Multimodal Gender Profile using Neural Networks
Carlos Pérez Estruch | Roberto Paredes Palacios | Paolo Rosso
Proceedings of the International Conference Recent Advances in Natural Language Processing, RANLP 2017

Gender identification in social networks is one of the most popular aspects of user profile learning. Traditionally it has been linked to author profiling, a difficult problem to solve because of the little difference in the use of language between genders. This situation has led to the need of taking into account other information apart from textual data, favoring the emergence of multimodal data. The aim of this paper is to apply neural networks to perform data fusion, using an existing multimodal corpus, the NUS-MSS data set, that (not only) contains text data, but also image and location information. We improved previous results in terms of macro accuracy (87.8%) obtaining the state-of-the-art performance of 91.3%.