Back to Search Start Over

DefVerify: Do Hate Speech Models Reflect Their Dataset's Definition?

Authors :
Khurana, Urja
Nalisnick, Eric
Fokkens, Antske
Publication Year :
2024

Abstract

When building a predictive model, it is often difficult to ensure that domain-specific requirements are encoded by the model that will eventually be deployed. Consider researchers working on hate speech detection. They will have an idea of what is considered hate speech, but building a model that reflects their view accurately requires preserving those ideals throughout the workflow of data set construction and model training. Complications such as sampling bias, annotation bias, and model misspecification almost always arise, possibly resulting in a gap between the domain specification and the model's actual behavior upon deployment. To address this issue for hate speech detection, we propose DefVerify: a 3-step procedure that (i) encodes a user-specified definition of hate speech, (ii) quantifies to what extent the model reflects the intended definition, and (iii) tries to identify the point of failure in the workflow. We use DefVerify to find gaps between definition and model behavior when applied to six popular hate speech benchmark datasets.<br />Comment: Preprint

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2410.15911
Document Type :
Working Paper