FairCLIP: Harnessing Fairness in Vision-Language Learning
Yan Luo, Min Shi, Muhammad Osama Khan, Muhammad Muneeb Afzal, Hao, Huang, Shuaihang Yuan, Yu Tian, Luo Song, Ava Kouhana, Tobias Elze, Yi Fang,, Mengyu Wang

TL;DR
FairCLIP introduces a novel fairness-aware approach for vision-language models in medical applications, supported by a new dataset, Harvard-FairVLMed, revealing biases and proposing mitigation strategies to promote ethical AI in healthcare.
Contribution
This work presents the first medical vision-language dataset with demographic annotations and a fairness mitigation method, addressing bias issues in VL models for healthcare.
Findings
VL models exhibit significant demographic biases.
FairCLIP reduces bias while maintaining performance.
Harvard-FairVLMed enables fairness analysis in medical VL models.
Abstract
Fairness is a critical concern in deep learning, especially in healthcare, where these models influence diagnoses and treatment decisions. Although fairness has been investigated in the vision-only domain, the fairness of medical vision-language (VL) models remains unexplored due to the scarcity of medical VL datasets for studying fairness. To bridge this research gap, we introduce the first fair vision-language medical dataset Harvard-FairVLMed that provides detailed demographic attributes, ground-truth labels, and clinical notes to facilitate an in-depth examination of fairness within VL foundation models. Using Harvard-FairVLMed, we conduct a comprehensive fairness analysis of two widely-used VL models (CLIP and BLIP2), pre-trained on both natural and medical domains, across four different protected attributes. Our results highlight significant biases in all VL models, with Asian,…
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Taxonomy
TopicsSecond Language Learning and Teaching · Global Education and Multiculturalism · Global Educational Policies and Reforms
MethodsAttentive Walk-Aggregating Graph Neural Network
