no code implementations • GermEval 2021 • Julian Risch, Anke Stoll, Lena Wilms, Michael Wiegand
We present the GermEval 2021 shared task on the identification of toxic, engaging, and fact-claiming comments.
no code implementations • COLING 2022 • Michael Wiegand, Rebecca Wilm, Katja Markert
We present a new dataset comprising tweets for the novel task of detecting biographically relevant utterances.
no code implementations • LREC 2022 • Elisabeth Eder, Michael Wiegand, Ulrike Krieg-Holz, Udo Hahn
The exploding amount of user-generated content has spurred NLP research to deal with documents from various digital communication formats (tweets, chats, emails, etc.).
1 code implementation • NAACL 2022 • Michael Wiegand, Elisabeth Eder, Josef Ruppenhofer
We address the task of distinguishing implicitly abusive sentences on identity groups (“Muslims contaminate our planet”) from other group-related negative polar sentences (“Muslims despise terrorism”).
no code implementations • NAACL 2021 • Michael Wiegand, Josef Ruppenhofer, Elisabeth Eder
Abusive language detection is an emerging field in natural language processing which has received a large amount of attention recently.
1 code implementation • EACL 2021 • Michael Wiegand, Maja Geulig, Josef Ruppenhofer
We examine the task of detecting implicitly abusive comparisons (e. g. {``}Your hair looks like you have been electrocuted{''}).
no code implementations • EACL 2021 • Michael Wiegand, Josef Ruppenhofer
We propose to use abusive emojis, such as the {``}middle finger{''} or {``}face vomiting{''}, as a proxy for learning a lexicon of abusive words.
no code implementations • 6 Jan 2014 • Benjamin Roth, Tassilo Barth, Michael Wiegand, Mittul Singh, Dietrich Klakow
In the TAC KBP 2013 English Slotfilling evaluation, the submitted main run of the LSV RelationFactory system achieved the top-ranked F1-score of 37. 3%.
no code implementations • LREC 2012 • Simon Clematide, Stefan Gindl, Manfred Klenner, Stefanos Petrakis, Robert Remus, Josef Ruppenhofer, Ulli Waltinger, Michael Wiegand
The construction of the corpus is based on the manual annotation of 270 German-language sentences considering three different layers of granularity.
no code implementations • LREC 2012 • Michael Wiegand, Benjamin Roth, Eva Lasarcyk, Stephanie Köser, Dietrich Klakow
We present a gold standard for semantic relation extraction in the food domain for German.