Why gender and age prediction from tweets is hard : lessons from a crowdsourcing experiment

There is a growing interest in automatically predicting the gender and age of authors from texts. However, most research so far ignores that language use is related to the social identity of speak- ers, which may be different from their biological identity. In this paper, we combine insights from sociolinguistics with data collected through an online game, to underline the importance of approaching age and gender as social variables rather than static biological variables. In our game, thousands of players guessed the gender and age of Twitter users based on tweets alone. We show that more tha... Mehr ...

Verfasser: Nguyen, Dong
Trieschnigg, Dolf
Doğruöz, A. Seza
Gravel, Rilana
Theune, Mariët
Meder, Theo
de Jong, Franciska
Dokumenttyp: conference
Erscheinungsdatum: 2014
Verlag/Hrsg.: Dublin City University and Association for Computational Linguistics
Schlagwörter: Languages and Literatures / social media / Dutch / twitter / gender / crowdsourcing / Lt3 / computational sociolinguistics
Sprache: Englisch
Permalink: https://search.fid-benelux.de/Record/base-26675649
Datenquelle: BASE; Originalkatalog
Powered By: BASE
Link(s) : https://biblio.ugent.be/publication/8694786

There is a growing interest in automatically predicting the gender and age of authors from texts. However, most research so far ignores that language use is related to the social identity of speak- ers, which may be different from their biological identity. In this paper, we combine insights from sociolinguistics with data collected through an online game, to underline the importance of approaching age and gender as social variables rather than static biological variables. In our game, thousands of players guessed the gender and age of Twitter users based on tweets alone. We show that more than 10% of the Twitter users do not employ language that the crowd associates with their biological sex. It is also shown that older Twitter users are often perceived to be younger. Our findings highlight the limitations of current approaches to gender and age prediction from texts.