Hylke Van Der Veen

Also published as: Hylke van der Veen


2023

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Benchmarking Offensive and Abusive Language in Dutch Tweets
Tommaso Caselli | Hylke Van Der Veen
The 7th Workshop on Online Abuse and Harms (WOAH)

We present an extensive evaluation of different fine-tuned models to detect instances of offensive and abusive language in Dutch across three benchmarks: a standard held-out test, a task- agnostic functional benchmark, and a dynamic test set. We also investigate the use of data cartography to identify high quality training data. Our results show a relatively good quality of the manually annotated data used to train the models while highlighting some critical weakness. We have also found a good portability of trained models along the same language phenomena. As for the data cartography, we have found a positive impact only on the functional benchmark and when selecting data per annotated dimension rather than using the entire training material.

2021

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DALC: the Dutch Abusive Language Corpus
Tommaso Caselli | Arjan Schelhaas | Marieke Weultjes | Folkert Leistra | Hylke van der Veen | Gerben Timmerman | Malvina Nissim
Proceedings of the 5th Workshop on Online Abuse and Harms (WOAH 2021)

As socially unacceptable language become pervasive in social media platforms, the need for automatic content moderation become more pressing. This contribution introduces the Dutch Abusive Language Corpus (DALC v1.0), a new dataset with tweets manually an- notated for abusive language. The resource ad- dress a gap in language resources for Dutch and adopts a multi-layer annotation scheme modeling the explicitness and the target of the abusive messages. Baselines experiments on all annotation layers have been conducted, achieving a macro F1 score of 0.748 for binary classification of the explicitness layer and .489 for target classification.