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dc.contributor.authorZhang, Yupeng
dc.date.accessioned2026-05-22T04:46:29Z
dc.date.available2026-05-22T04:46:29Z
dc.date.issued2026en_AU
dc.identifier.urihttps://hdl.handle.net/2123/35344
dc.description.abstractRapid integration of artificial intelligence (AI), particularly Vision-Language Models (VLMs), as decision support system for medical diagnosis promises to enhance healthcare outcomes. However, these models can inherit and amplify societal biases, leading to significant performance disparities across diverse patient subgroups. This thesis addresses a critical and often overlooked challenge: intersectional fairness, where compounded disadvantages emerge for individuals with multiple demographic attributes (e.g., by race and gender). Existing fairness interventions, which typically focus on single demographic attributes, often fail to mitigate these compounded biases and can inadvertently degrade overall model performance or mask subtle but clinically significant disparities in diagnostic certainty. This thesis introduces a novel regularisation framework, Cross-Modal Alignment Consistency Maximum Mean Discrepancy (CMAC-MMD), to specifically address intersectional fairness at the decision level of models' architecture. This approach represents a conceptual shift from image and text feature-level manipulation to directly equalizing the model's diagnostic confidence across all intersectional subgroups. By defining a scalar "cross-modal alignment score" that serves as a proxy for the model's certainty, the CMAC-MMD method leverages a unique fairness loss to align the statistical distributions of these scores. This process compels the model to produce predictions with equitable confidence and decisiveness for all patient subgroups, regardless of their demographic profile, without requiring sensitive data during inference time. The effectiveness of the proposed framework is comprehensively evaluated through benchmarking on dermatology and ophthalmology datasets for disease classification. The results demonstrate that CMAC-MMD reduces intersectional performance disparities across multiple fairness metrics while maintaining overall diagnostic accuracy as baseline models.en_AU
dc.language.isoenen_AU
dc.subjectIntersectional fairnessen_AU
dc.subjectvision-language modelsen_AU
dc.subjectalgorithmic fairnessen_AU
dc.subjectmedical image classificationen_AU
dc.subjectbias mitigationen_AU
dc.subjectMaximum Mean Discrepancyen_AU
dc.subjecttrustworthy AIen_AU
dc.titleStrategies to Ensure Intersectional Fairness in Vision-Language Models for Clinical Decision Supporten_AU
dc.typeThesis
dc.type.thesisMasters by Researchen_AU
dc.rights.otherThe author retains copyright of this thesis. It may only be used for the purposes of research and study. It must not be used for any other purposes and may not be transmitted or shared with others without prior permission.en
usyd.facultySeS faculties schools::Faculty of Engineering::School of Computer Scienceen_AU
usyd.degreeMaster of Philosophy M.Philen_AU
usyd.awardinginstThe University of Sydneyen_AU
usyd.advisorKim, Jinman
usyd.include.pubNoen_AU


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