Fairness in AI and machine learning systems has become a fundamental problem in the accountability of AI systems. While the need for accountability of AI models is near ubiquitous, healthcare in particular is a challenging field where accountability of such systems takes upon additional importance, as decisions in healthcare can have life altering consequences. In this paper we present preliminary results on fairness in the context of classification parity in healthcare. We also present some exploratory methods to improve fairness and choosing appropriate classification algorithms in the context of healthcare.
翻译:AI和机器学习系统的公平性已成为AI系统问责制的一个根本问题。虽然AI模型问责制的必要性几乎无处不在,但卫生保健尤其是一个具有挑战性的领域,因为这类系统的问责制具有更大的重要性,因为卫生保健方面的决定可能会改变生活的后果。本文介绍了在卫生保健分类平等方面的公平性的初步结果。我们还提出了一些探索性方法,以提高卫生保健方面的公平性,并选择适当的分类算法。