Abusive Comments in Online Media and How to Fight Them: State of the Domain and a Call to Action

Niemann Marco, Welsing Jens, Riehle Dennis M, Brunk Jens, Assenmacher Dennis, Becker Jörg


Zusammenfassung

While abusive language in online contexts is a long-known problem, algorithmic detection and moderation support are only recently experiencing rising interest. This survey provides a structured overview of the latest academic publications in the domain. Assessed concepts include the used datasets, their language, annotation origins and quality, as well as applied machine learning approaches. It is rounded off by an assessment of meta aspects such as author collaborations and networks as well as extant funding opportunities. Despite all progress, the domain still has the potential to improve on many aspects: (international) collaboration, diversifying and increasing available datasets, careful annotations, and transparency. Furthermore, abusive language detection is a topic of high societal relevance and requires increased funding from public authorities.

Schlüsselwörter
Abusive language; Comment moderation; Machine learning; Review



Publikationstyp
Forschungsartikel in Sammelband (Konferenz)

Begutachtet
Ja

Publikationsstatus
Veröffentlicht

Jahr
2020

Konferenz
2nd Multidisciplinary International Symposium on Disinformation in Open Online Media

Konferenzort
Leiden

Buchtitel
Disinformation in Open Online Media. Second Multidisciplinary International Symposium, MISDOOM 2020, Leiden, The Netherlands, October 26–27, 2020, Proceedings

Herausgeber
van Duijn, Max; Preuss, Mike; Spaiser, Viktoria; Takes, Frank; Verberne, Suzan

Erste Seite
122

Letzte Seite
137

Band
12259

Reihe
Lecture Notes in Computer Science

Verlag
Springer

Ort
Cham

Sprache
Englisch

ISSN
0302-9743

ISBN
978-3-030-61841-4

DOI

Gesamter Text