no code implementations • LREC 2022 • Ines Rehbein, Josef Ruppenhofer
This paper presents a compositional annotation scheme to capture the clusivity properties of personal pronouns in context, that is their ability to construct and manage in-groups and out-groups by including/excluding the audience and/or non-speech act participants in reference to groups that also include the speaker.
no code implementations • UDW (COLING) 2020 • Josef Ruppenhofer, Ines Rehbein
We argue that a unified treatment of constructions across languages will increase the consistency of the UD annotations and thus the quality of the treebanks for linguistic analysis.
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 • KONVENS (WS) 2021 • Ines Rehbein, Josef Ruppenhofer, Julian Bernauer
This paper investigates the use of first person plural pronouns as a rhetorical device in political speeches.
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.
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.
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 • 3 Nov 2020 • Manuela Sanguinetti, Lauren Cassidy, Cristina Bosco, Özlem Çetinoğlu, Alessandra Teresa Cignarella, Teresa Lynn, Ines Rehbein, Josef Ruppenhofer, Djamé Seddah, Amir Zeldes
This article presents a discussion on the main linguistic phenomena which cause difficulties in the analysis of user-generated texts found on the web and in social media, and proposes a set of annotation guidelines for their treatment within the Universal Dependencies (UD) framework of syntactic analysis.
no code implementations • LREC 2020 • Manuela Sanguinetti, Cristina Bosco, Lauren Cassidy, {\"O}zlem {\c{C}}etino{\u{g}}lu, Aless Cignarella, ra Teresa, Teresa Lynn, Ines Rehbein, Josef Ruppenhofer, Djam{\'e} Seddah, Amir Zeldes
The paper presents a discussion on the main linguistic phenomena of user-generated texts found in web and social media, and proposes a set of annotation guidelines for their treatment within the Universal Dependencies (UD) framework.
no code implementations • LREC 2020 • Josef Ruppenhofer, Ines Rehbein, Carolina Flinz
Building on the OntoNotes 5. 0 NER inventory, our scheme is adapted for a corpus of transcripts of biographic interviews by adding categories for AGE and LAN(guage) and also features extended numeric and temporal categories.
no code implementations • LREC 2020 • Ines Rehbein, Josef Ruppenhofer
In the paper, we present inter-annotator agreement scores for our dataset and discuss problems for annotating causal language.
no code implementations • LREC 2020 • Ines Rehbein, Josef Ruppenhofer, Thomas Schmidt
For the detection of boundaries in spoken language transcripts, we achieve a substantial improvement when framing the boundary detection problem assentence pair classification task, as compared to a sequence tagging approach.
no code implementations • COLING 2018 • Ines Rehbein, Josef Ruppenhofer
We present a method for detecting annotation errors in manually and automatically annotated dependency parse trees, based on ensemble parsing in combination with Bayesian inference, guided by active learning.
no code implementations • ACL 2017 • Ines Rehbein, Josef Ruppenhofer
We introduce a method for error detection in automatically annotated text, aimed at supporting the creation of high-quality language resources at affordable cost.
no code implementations • WS 2017 • Ines Rehbein, Josef Ruppenhofer
In this paper, we present a simple, yet effective method for the automatic identification and extraction of causal relations from text, based on a large English-German parallel corpus.
no code implementations • LREC 2016 • Josef Ruppenhofer, Br, Jasper es
We also present results of a crowdsourcing experiment to test the utility of some known and some new functors for opinion inference where, unlike in previous work, subjects are asked to reason from event evaluation to participant evaluation.
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 • Josef Ruppenhofer, Ines Rehbein
This paper presents an annotation scheme for English modal verbs together with sense-annotated data from the news domain.