Discussing the Value of Automatic Hate Speech Detection in Online Debates

Köffer Sebastian, Riehle Dennis M, Höhenberger Steffen, Becker Jörg

Research article in edited proceedings (conference) | Peer reviewed

Abstract

This study discusses the potential value of automatic analytics of German texts to detect hate speech. In the course of a preliminary study, we collected a dataset of user comments on news articles, focused on the refugee crisis in 2015/16. A crowdsourcing approach was used to label a subset of the data as hateful and non-hateful to be used as training and evaluation data. Furthermore, a vocabulary was created containing the words that are indicating hate and no hate. The best performing combination of feature groups was a Word2Vec approach and Extended 2-grams. Our study builds upon previous research for English texts and demonstrates its transferability to German. The paper discusses the results with respect to the potential for media organizations and considerations about moderation techniques and algorithmic transparency.

Details about the publication

PublisherDrews Paul; Burkhardt Funk; Niemeyer Peter; Xie Lin
Book titleMultikonferenz Wirtschaftsinformatik 2018: Data Driven X - Turning Data in Value
Page range83-94
StatusPublished
Release year2018
Language in which the publication is writtenEnglish
ConferenceMultikonferenz Wirtschaftsinformatik (MKWI 2018), Leuphana, Germany, undefined
ISBN978-3-935786-72-0
Link to the full texthttp://pub.dennisriehle.de/2018/03/Koeffer et al. - Discussing the Value of Automatic Hate Speech Detection in Online Debates.pdf
KeywordsNatural Language Processing (NLP); Hate Speech; Text Analytics

Authors from the University of Münster

Becker, Jörg
European Research Center for Information Systems (ERCIS)
Chair of Information Systems and Information Management (IS)
Höhenberger, Steffen
Chair of Information Systems and Information Management (IS)
Köffer, Sebastian
Chair of Information Systems and Information Management (IS)
Riehle, Dennis
Chair of Information Systems and Information Management (IS)