Revisiting Technical Bias Mitigation Strategies
Journal:
arXiv
Published Date:
Oct 22, 2024
Abstract
Efforts to mitigate bias and enhance fairness in the artificial intelligence
(AI) community have predominantly focused on technical solutions. While
numerous reviews have addressed bias in AI, this review uniquely focuses on the
practical limitations of technical solutions in healthcare settings, providing
a structured analysis across five key dimensions affecting their real-world
implementation: who defines bias and fairness; which mitigation strategy to use
and prioritize among dozens that are inconsistent and incompatible; when in the
AI development stages the solutions are most effective; for which populations;
and the context in which the solutions are designed. We illustrate each
limitation with empirical studies focusing on healthcare and biomedical
applications. Moreover, we discuss how value-sensitive AI, a framework derived
from technology design, can engage stakeholders and ensure that their values
are embodied in bias and fairness mitigation solutions. Finally, we discuss
areas that require further investigation and provide practical recommendations
to address the limitations covered in the study.