eevvgg at SemEval-2023 Task 11: Offensive Language Classification with Rater-based Information
Ewelina Gajewska
The 17th International Workshop on Semantic Evaluation (SemEval-2023) Task 11: learning with disagreements (le-wi-di) Paper
TLDR:
A standard majority-based approach to text classification is challenged with an individualised approach in the Semeval-2023 Task 11. Here, disagreements are treated as a useful source of information that could be utilised in the training pipeline. The team proposal makes use of partially disaggregat
You can open the
#paper-SemEval_27
channel in a separate window.
Abstract:
A standard majority-based approach to text classification is challenged with an individualised approach in the Semeval-2023 Task 11. Here, disagreements are treated as a useful source of information that could be utilised in the training pipeline. The team proposal makes use of partially disaggregated data and additional information about annotators provided by the organisers to train a BERT-based model for offensive text classification. The approach extends previous studies examining the impact of using raters' demographic features on classification performance (Hovy, 2015) or training machine learning models on disaggregated data (Davani et al., 2022). The proposed approach was ranked 11 across all 4 datasets, scoring best for cases with a large pool of annotators (6th place in the MD-Agreement dataset) utilising features based on raters' annotation behaviour.