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Author Profiling from Facebook Corpora

Author(s):
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Hsieh, Fernando Chiu ; Dias, Rafael Felipe Sandroni ; Paraboni, Ivandre ; Declerck, T ; Calzolari, N ; Choukri, K ; Cieri, C ; Hasida, K ; Isahara, H ; Maegaard, B ; Mariani, J ; Moreno, A ; Odijk, J ; Piperidis, S ; Tokunaga, T ; Goggi, S ; Mazo, H
Total Authors: 17
Document type: Journal article
Source: PROCEEDINGS OF THE ELEVENTH INTERNATIONAL CONFERENCE ON LANGUAGE RESOURCES AND EVALUATION (LREC 2018); v. N/A, p. 5-pg., 2018-01-01.
Abstract

Author profiling - the computational task of prediction author's demographics from text - has been a popular research topic in the NLP field, and also the focus of a number of prominent shared tasks. Author profiling is a problem of growing importance, with applications in forensics, security, sales and many others. In recent years, text available from social networks has become a primary source for computational models of author profiling, but existing studies are still largely focused on age and gender prediction, and are in many cases limited to the use of English text. Other languages, and other author profiling tasks, remain somewhat less popular. As a means to further this issue, in this work we present initial results of a number of author profiling tasks from a Facebook corpus in the Brazilian Portuguese language. As in previous studies, our own work will focus on both standard gender and age prediction tasks but, in addition to these, we will also address two less usual author profiling tasks, namely, predicting an author's degree of religiosity and IT background status. The tasks are modelled by making use of different knowledge sources, and results of alternative approaches are discussed. (AU)

FAPESP's process: 16/14223-0 - Computational Treatment of Human Personality for Natural Language Processing Applications
Grantee:Ivandre Paraboni
Support Opportunities: Regular Research Grants