Exploring Fusion Techniques in Multimodal AI-Based Recruitment: Insights from FairCVdb
Swati, Swati, Roy, Arjun, Ntoutsi, Eirini
–arXiv.org Artificial Intelligence
Despite the large body of work on fairness-aware learning for individual modalities like tabular data, images, and text, less work has been done on multimodal data, which fuses various modalities for a comprehensive analysis. In this work, we investigate the fairness and bias implications of multimodal fusion techniques in the context of multimodal AI-based recruitment systems using the FairCVdb dataset. Our results show that early-fusion closely matches the ground truth for both demographics, achieving the lowest MAEs by integrating each modality's unique characteristics. In contrast, late-fusion leads to highly generalized mean scores and higher MAEs. Our findings emphasise the significant potential of early-fusion for accurate and fair applications, even in the presence of demographic biases, compared to late-fusion. Future research could explore alternative fusion strategies and incorporate modality-related fairness constraints to improve fairness. For code and additional insights, visit: https://github.com/Swati17293/Multimodal-AI-Based-Recruitment-FairCVdb
arXiv.org Artificial Intelligence
Jun-17-2024
- Country:
- Asia (0.04)
- Europe > Germany
- Rheinland-Pfalz > Mainz (0.04)
- Berlin (0.04)
- Bavaria > Upper Bavaria
- Munich (0.04)
- Genre:
- Research Report > New Finding (1.00)
- Technology: