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Título del libro: Wassa 2022 - 12th Workshop On Computational Approaches To Subjectivity, Sentiment And Social Media Analysis, Proceedings Of The Workshop
Título del capítulo: Distinguishing In-Groups and Onlookers by Language Use

Autores UNAM:
GUILLERMO DE ANDA JAUREGUI;
Autores externos:

Idioma:

Año de publicación:
2022
Palabras clave:

Computational linguistics; COVID-19; Group memberships; Group-based; Network information; Network interaction; Public opinions; Social media; Social aspects


Resumen:

Inferring group membership of social media users is of high interest in many domains. Group membership is typically inferred via network interactions with other members, or by the usage of in-group language. However, network information is incomplete when users or groups move between platforms, and in-group keywords lose significance as public discussion about a group increases. Similarly, using keywords to filter content and users can fail to distinguish between the various groups that discuss a topic?perhaps confounding research on public opinion and narrative trends. We present a classifier intended to distinguish members of groups from users discussing a group based on contextual usage of keywords. We demonstrate the classifier on a sample of community pairs from Reddit and focus on results related to the COVID-19 pandemic. © 2022 Association for Computational Linguistics.


Entidades citadas de la UNAM: