@inproceedings{4fa2c42774af4a0a8dcd6a35c1ac219e,
title = "I Feel Offended, Don{\textquoteright}t Be Abusive!: Implicit/Explicit Messages in Offensive and Abusive Language",
abstract = "Abusive language detection is an unsolved and challenging problem for the NLP community. Recent literature suggests various approaches to distinguish between different language phenomena (e.g., hate speech vs. cyberbullying vs. offensive language) and factors (degree of explicitness and target) that may help to classify different abusive language phenomena. There are data sets that annotate the target of abusive messages (i.e.OLID/OffensEval (Zampieri et al., 2019a)). However, there is a lack of data sets that take into account the degree of explicitness. In this paper, we propose annotation guidelines to distinguish between explicit and implicit abuse in English and apply them to OLID/OffensEval. The outcome is a newly created resource, AbuseEval v1.0, which aims to address some of the existing issues in the annotation of offensive and abusive language (e.g., explicitness of the message, presence of a target, need of context, and interaction across different phenomena). ",
author = "Tommaso Caselli and Valerio Basile and Jelena Mitrovi{\'c} and Inga Kartozya and Micheal Granitzer",
year = "2020",
language = "English",
isbn = "979-109554634-4",
pages = "6193--6202",
booktitle = "12th International Conference on Language Resources and Evaluation",
publisher = "European Language Resources Association (ELRA)",
note = "12th Language Resources and Evaluation Conference<br/> : LREC 2020 ; Conference date: 11-05-2020 Through 16-05-2020",
url = "https://lrec2020.lrec-conf.org/en/",
}