In this work, we present our approach for the Author Profiling task of PAN 2019. The task is divided into two sub-problems, bot, and gender detection, for two different languages: English and Spanish. For each instance of the problem and each language, we address the problem differently. We use an ensemble architecture to solve the Bot Detection for accounts that write in English and a single SVM for those who write in Spanish. For the Gender detection we use a single SVM architecture for both the languages, but we pre-process the tweets in a different way. Our final models achieve accuracy over the 90% in the bot detection task, while for the gender detection, of 84.17% and 77.61% respectively for the English and Spanish languages.
Dettaglio pubblicazione
2019, CEUR Workshop Proceedings, Pages - (volume: 2380)
Bot and gender detection of twitter accounts using distortion and LSA notebook for PAN at CLEF 2019 (04b Atto di convegno in volume)
Bacciu A., La Morgia M., Mei A., Nemmi E. N., Neri V., Stefa J.
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