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SemEval-2021 Task 5: Toxic Spans Detection

John Pavlopoulos, Jeffrey Sorensen, Léo Laugier, Ion Androutsopoulos

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Abstract

The Toxic Spans Detection task of SemEval-2021 required participants to predict the spans of toxic posts that were responsible for the toxic label of the posts. The task could be addressed as supervised sequence labeling, using training data with gold toxic spans provided by the organisers. It could also be treated as rationale extraction, using classifiers trained on potentially larger external datasets of posts manually annotated as toxic or not, without toxic span annotations. For the supervised sequence labeling approach and evaluation purposes, posts previously labeled as toxic were crowd-annotated for toxic spans. Participants submitted their predicted spans for a held-out test set, and were scored using character-based F1. This overview summarises the work of the 36 teams that provided system descriptions.

Topics & Concepts

Task (project management)Computer scienceSemEvalTraining setSet (abstract data type)Test setArtificial intelligenceNatural language processingSpan (engineering)Machine learningEngineeringProgramming languageCivil engineeringSystems engineeringHate Speech and Cyberbullying DetectionSoftware Engineering ResearchMisinformation and Its Impacts
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