On the Interplay between Human Label Variation and Model Fairness

cs.CL arXiv:2510.12036
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Abstract

The impact of human label variation (HLV) on model fairness is an unexplored topic. This paper examines the interplay by comparing training on majority-vote labels with a range of HLV methods. Our experiments show that without explicit debiasing, HLV training methods have a positive impact on fairness under certain configurations.

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