Building reliable AI decision support systems requires a robust set of data on which to train models; both with respect to quantity and diversity. Obtaining such datasets can be difficult in resource limited settings, or for applications in early stages of deployment. Sample rejection is one way to work around this challenge, however much of the existing work in this area is ill-suited for such scenarios. This paper substantiates that position and proposes a simple solution as a proof of concept baseline.
翻译:建立可靠的大赦国际决策支持系统需要一套可靠的数据,用于培训模型,包括数量和多样性方面的模型。在资源有限的情况下,获取这类数据集可能很困难,或者在部署的早期阶段很难应用。抽样拒绝是应对这一挑战的一种方法,然而,这一领域现有的许多工作不适合这种假设情况。本文件证实了这一立场,并提出了一个简单的解决方案,作为概念基线的证明。