Paper ID: 2206.13284

Which one is more toxic? Findings from Jigsaw Rate Severity of Toxic Comments

Millon Madhur Das, Punyajoy Saha, Mithun Das

The proliferation of online hate speech has necessitated the creation of algorithms which can detect toxicity. Most of the past research focuses on this detection as a classification task, but assigning an absolute toxicity label is often tricky. Hence, few of the past works transform the same task into a regression. This paper shows the comparative evaluation of different transformers and traditional machine learning models on a recently released toxicity severity measurement dataset by Jigsaw. We further demonstrate the issues with the model predictions using explainability analysis.

Submitted: Jun 27, 2022