The University of Chicago, Chicago, IL, USA.
ANU, Canberra, New South Wales, Australia.
Nature. 2024 Feb;626(7999):491-499. doi: 10.1038/s41586-023-06972-y. Epub 2024 Feb 14.
Social scientists have increasingly turned to the experimental method to understand human behaviour. One critical issue that makes solving social problems difficult is scaling up the idea from a small group to a larger group in more diverse situations. The urgency of scaling policies impacts us every day, whether it is protecting the health and safety of a community or enhancing the opportunities of future generations. Yet, a common result is that, when we scale up ideas, most experience a 'voltage drop'-that is, on scaling, the cost-benefit profile depreciates considerably. Here I argue that, to reduce voltage drops, we must optimally generate policy-based evidence. Optimality requires answering two crucial questions: what information should be generated and in what sequence. The economics underlying the science of scaling provides insights into these questions, which are in some cases at odds with conventional approaches. For example, there are important situations in which I advocate flipping the traditional social science research model to an approach that, from the beginning, produces the type of policy-based evidence that the science of scaling demands. To do so, I propose augmenting efficacy trials by including relevant tests of scale in the original discovery process, which forces the scientist to naturally start with a recognition of the big picture: what information do I need to have scaling confidence?
社会科学家越来越多地转向实验方法来理解人类行为。一个使解决社会问题变得困难的关键问题是,将一个小群体的想法推广到更多样化的更大群体中。政策推广的紧迫性每天都在影响着我们,无论是保护社区的健康和安全,还是增强后代的机会。然而,一个常见的结果是,当我们推广想法时,大多数都会经历“电压下降”——也就是说,在推广过程中,成本效益状况会大幅下降。在这里,我认为,为了减少电压下降,我们必须优化生成基于政策的证据。优化需要回答两个关键问题:应该生成什么信息,以及按什么顺序生成。推广科学的经济学为这些问题提供了一些见解,这些见解在某些情况下与传统方法不一致。例如,在某些情况下,我主张颠覆传统的社会科学研究模式,采用一种从一开始就产生推广科学所要求的基于政策的证据的方法。为此,我建议通过在原始发现过程中纳入相关的规模测试来扩充疗效试验,这迫使科学家自然地从整体上开始认识到:我需要哪些信息才能有信心进行推广?