Kurvers Ralf H J M, Herzog Stefan M, Hertwig Ralph, Krause Jens, Carney Patricia A, Bogart Andy, Argenziano Giuseppe, Zalaudek Iris, Wolf Max
Center for Adaptive Rationality, Max Planck Institute for Human Development, 14195 Berlin, Germany; Department of Biology and Ecology of Fishes, Leibniz Institute of Freshwater Ecology and Inland Fisheries, 12587 Berlin, Germany;
Center for Adaptive Rationality, Max Planck Institute for Human Development, 14195 Berlin, Germany;
Proc Natl Acad Sci U S A. 2016 Aug 2;113(31):8777-82. doi: 10.1073/pnas.1601827113. Epub 2016 Jul 18.
Collective intelligence refers to the ability of groups to outperform individual decision makers when solving complex cognitive problems. Despite its potential to revolutionize decision making in a wide range of domains, including medical, economic, and political decision making, at present, little is known about the conditions underlying collective intelligence in real-world contexts. We here focus on two key areas of medical diagnostics, breast and skin cancer detection. Using a simulation study that draws on large real-world datasets, involving more than 140 doctors making more than 20,000 diagnoses, we investigate when combining the independent judgments of multiple doctors outperforms the best doctor in a group. We find that similarity in diagnostic accuracy is a key condition for collective intelligence: Aggregating the independent judgments of doctors outperforms the best doctor in a group whenever the diagnostic accuracy of doctors is relatively similar, but not when doctors' diagnostic accuracy differs too much. This intriguingly simple result is highly robust and holds across different group sizes, performance levels of the best doctor, and collective intelligence rules. The enabling role of similarity, in turn, is explained by its systematic effects on the number of correct and incorrect decisions of the best doctor that are overruled by the collective. By identifying a key factor underlying collective intelligence in two important real-world contexts, our findings pave the way for innovative and more effective approaches to complex real-world decision making, and to the scientific analyses of those approaches.
集体智慧是指群体在解决复杂认知问题时超越个体决策者的能力。尽管它有潜力在包括医学、经济和政治决策在内的广泛领域中彻底改变决策方式,但目前对于现实世界背景下集体智慧背后的条件知之甚少。我们在此聚焦于医学诊断的两个关键领域,即乳腺癌和皮肤癌检测。通过一项利用大型真实世界数据集的模拟研究,涉及140多名医生做出超过20000次诊断,我们调查了何时将多名医生的独立判断结合起来会优于团队中最优秀的医生。我们发现诊断准确性的相似性是集体智慧的关键条件:只要医生的诊断准确性相对相似,汇总医生的独立判断就会优于团队中最优秀的医生,但当医生的诊断准确性差异过大时则不然。这个极其简单的结果非常稳健,适用于不同的团队规模、最优秀医生的表现水平以及集体智慧规则。相似性的促成作用反过来又可以通过其对最优秀医生被集体否决的正确和错误决策数量的系统影响来解释。通过在两个重要的现实世界背景中确定集体智慧背后的一个关键因素,我们的研究结果为复杂现实世界决策的创新和更有效方法以及对这些方法的科学分析铺平了道路。