Detection and impact estimation of social bots in the Chilean Twitter network
School authors:
author photo
Marcelo Gabriel Mendoza
External authors:
  • Eliana Providel ( Universidad de Valparaiso )
  • Marcelo Santos ( University Diego Portales )
  • Sebastian Valenzuela ( Pontificia Universidad Catolica de Chile )
Abstract:

The rise of bots that mimic human behavior represents one of the most pressing threats to healthy information environments on social media. Many bots are designed to increase the visibility of low-quality content, spread misinformation, and artificially boost the reach of brands and politicians. These bots can also disrupt civic action coordination, such as by flooding a hashtag with spam and undermining political mobilization. Social media platforms have recognized these malicious bots' risks and implemented strict policies and protocols to block automated accounts. However, effective bot detection methods for Spanish are still in their early stages. Many studies and tools used for Spanish are based on English-language models and lack performance evaluations in Spanish. In response to this need, we have developed a method for detecting bots in Spanish called Botcheck. Botcheck was trained on a collection of Spanish-language accounts annotated in Twibot-20, a large-scale dataset featuring thousands of accounts annotated by humans in various languages. We evaluated Botcheck's performance on a large set of labeled accounts and found that it outperforms other competitive methods, including deep learning-based methods. As a case study, we used Botcheck to analyze the 2021 Chilean Presidential elections and discovered evidence of bot account intervention during the electoral term. In addition, we conducted an external validation of the accounts detected by Botcheck in the case study and found our method to be highly effective. We have also observed differences in behavior among the bots that are following the social media accounts of official presidential candidates.

UT WOS:001187716400006
Number of Citations
Type
Pages
ISSUE 1
Volume 14
Month of Publication MAR 19
Year of Publication 2024
DOI https://doi.org/10.1038/s41598-024-57227-3
ISSN
ISBN
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