Hybrid human-ML systems are increasingly in charge of consequential decisions in a wide range of domains. A growing body of empirical and theoretical work has advanced our understanding of these systems. However, existing empirical results are mixed, and theoretical proposals are often mutually incompatible. In this work, we propose a unifying framework for understanding conditions under which combining the complementary strengths of humans and ML leads to higher quality decisions than those produced by each of them individually -- a state which we refer to as human-ML complementarity. We focus specifically on the context of human-ML predictive decision-making and investigate optimal ways of combining human and ML predictive decisions, accounting for the underlying sources of variation in their judgments. Within this scope, we present two crucial contributions. First, taking a computational perspective of decision-making and drawing upon prior literature in psychology, machine learning, and human-computer interaction, we introduce a taxonomy characterizing a wide range of criteria across which human and machine decision-making differ. Second, formalizing our taxonomy allows us to study how human and ML predictive decisions should be aggregated optimally. We show that our proposed framework encompasses several existing models of human-ML complementarity as special cases. Last but not least, an initial exploratory analysis of our framework presents a critical insight for future work in human-ML complementarity: the mechanism by which we combine human and ML judgments should be informed by the underlying causes of divergence in their decisions.
翻译:越来越多的经验和理论工作增进了我们对这些系统的理解,然而,现有的经验结果参差不齐,理论建议往往互不相容。在这项工作中,我们提议了一个统一的理解框架,在这种条件下,将人类和ML的互补优势结合起来,使人类和ML之间的互补优势导致作出比每个人类和机器之间的互补决定都更高质量的决定 -- -- 我们称之为人与ML的互补。第二,我们特别侧重于人类和ML的预测决策的背景,并研究如何将人类和ML的预测性决定结合起来的最佳方法,说明其判断中的差异的根源。在此范围内,我们提出两项关键的贡献。首先,从决策的计算角度出发,并借鉴心理学、机器学习和人类-计算机互动方面的先前文献,我们引入一种分类学,把人类和机器决策之间不同的一系列标准定性为不同的标准。第二,我们将我们的分类系统正规化,使我们能够研究人类和ML的预测性决定应如何最佳地加以综合。我们提议的框架包括了人类-ML决定中的一些基本的解释性模型。我们提出的框架包括了人类-ML决定的初始性结论性分析,这是人类分析中的一项特殊案例。