Master data

Linguistic Methods for the Detection of Implicit Abuse
Description:

Recent years have seen a massive rise in abusive content on the web. Automatic classification methods are sought to assist operators of online platforms in finding such content. Since much abusive content is expressed in the form of written comments, natural language processing is a key technology in tackling this issue. The effectiveness of state-of-the-art methods for abusive language detection is limited. While explicit abuse, that is, abuse conveyed by unambiguously abusive words, such as swearwords, can now be fairly reliably detected, we currently have no indication that classifiers can also detect implicit forms of abuse. In this project, we want to address the classification of a set of subtypes of implicit abuse to fill this important gap in current research. In order to do so, we will create datasets that suitably represent these forms of abuse and develop classification methods that can also be evaluated on those datasets. Linguistic features will play a key role for classification. They are more important for detecting implicitly abusive language than for detecting explicitly abusive language.


Keywords: Computerlinguistik, Digital Humanities, Informatik
Short title: FWF: Erkennung Impliziter Beleidigungen
Period: 01.07.2023 - 30.06.2027
Contact e-mail: -
Homepage: -

Employees

Employees Role Time period
Michael Wiegand (internal)
  • Project leader
  • Applicant
  • 01.07.2023 - 30.06.2027
  • 01.07.2023 - 30.06.2027
Tina Lommel (internal)
  • PhD student
  • 01.07.2023 - 30.06.2027

Categorisation

Project type Research funding (on request / by call for proposals)
Funding type §26
Research type
  • Fundamental research
Subject areas
  • 1020 - Computer Sciences
  • 602011 - Computational linguistics
  • 605007 - Digital humanities
Research Cluster
  • Humans in the Digital Age
Gender aspects Genderrelevance not selected
Project focus
  • Science to Science (Quality indicator: n.a.)
Classification raster of the assigned organisational units:
  • No classification raster available for the assigned organisational units.
working groups No working group selected

Cooperations

No partner organisations selected