Result: FairASR: Fair Audio Contrastive Learning for Automatic Speech Recognition

Title:
FairASR: Fair Audio Contrastive Learning for Automatic Speech Recognition
Publication Year:
2025
Document Type:
Report Working Paper
Accession Number:
edsarx.2506.10747
Database:
arXiv

Further Information

Large-scale ASR models have achieved remarkable gains in accuracy and robustness. However, fairness issues remain largely unaddressed despite their critical importance in real-world applications. In this work, we introduce FairASR, a system that mitigates demographic bias by learning representations that are uninformative about group membership, enabling fair generalization across demographic groups. Leveraging a multi-demographic dataset, our approach employs a gradient reversal layer to suppress demographic-discriminative features while maintaining the ability to capture generalizable speech patterns through an unsupervised contrastive loss. Experimental results show that FairASR delivers competitive overall ASR performance while significantly reducing performance disparities across different demographic groups.
Comment: Accepted to Interspeech2025