UTNLP at SemEval-2021 Task 5: A Comparative Analysis of Toxic Span Detection using Attention-based, Named Entity Recognition, and Ensemble Models
Detecting which parts of a sentence contribute to that sentence's toxicity -- rather than providing a sentence-level verdict of hatefulness -- would increase the interpretability of models and allow human moderators to better understand the outputs of the system. This paper presents our team...
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Zusammenfassung: | Detecting which parts of a sentence contribute to that sentence's toxicity --
rather than providing a sentence-level verdict of hatefulness -- would increase
the interpretability of models and allow human moderators to better understand
the outputs of the system. This paper presents our team's, UTNLP, methodology
and results in the SemEval-2021 shared task 5 on toxic spans detection. We test
multiple models and contextual embeddings and report the best setting out of
all. The experiments start with keyword-based models and are followed by
attention-based, named entity-based, transformers-based, and ensemble models.
Our best approach, an ensemble model, achieves an F1 of 0.684 in the
competition's evaluation phase. |
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DOI: | 10.48550/arxiv.2104.04770 |