Stockholm Resilience Centre, Stockholm University, SE-10691 Stockholm, Sweden.
Geospatial Sciences and Human Security Division, Oak Ridge National Laboratory, Oak Ridge, TN 37830.
Proc Natl Acad Sci U S A. 2023 Oct 10;120(41):e2215676120. doi: 10.1073/pnas.2215676120. Epub 2023 Oct 2.
Scientists seek to understand the causal processes that generate sustainability problems and determine effective solutions. Yet, causal inquiry in nature-society systems is hampered by conceptual and methodological challenges that arise from nature-society interdependencies and the complex dynamics they create. Here, we demonstrate how sustainability scientists can address these challenges and make more robust causal claims through better integration between empirical analyses and process- or agent-based modeling. To illustrate how these different epistemological traditions can be integrated, we present four studies of air pollution regulation, natural resource management, and the spread of COVID-19. The studies show how integration can improve empirical estimates of causal effects, inform future research designs and data collection, enhance understanding of the complex dynamics that underlie observed temporal patterns, and elucidate causal mechanisms and the contexts in which they operate. These advances in causal understanding can help sustainability scientists develop better theories of phenomena where social and ecological processes are dynamically intertwined and prior causal knowledge and data are limited. The improved causal understanding also enhances governance by helping scientists and practitioners choose among potential interventions, decide when and how the timing of an intervention matters, and anticipate unexpected outcomes. Methodological integration, however, requires skills and efforts of all involved to learn how members of the respective other tradition think and analyze nature-society systems.
科学家致力于理解产生可持续性问题的因果过程,并确定有效的解决方案。然而,由于自然-社会相互依存关系及其产生的复杂动态,在自然-社会系统中进行因果探究受到了概念和方法上的挑战。在这里,我们展示了可持续性科学家如何通过更好地将实证分析与基于过程或基于主体的建模相结合,来应对这些挑战并提出更有力的因果论断。为了说明这些不同的认识论传统如何可以整合,我们提出了四个关于空气污染治理、自然资源管理和 COVID-19 传播的研究。这些研究表明,整合如何能够提高因果效应的实证估计,为未来的研究设计和数据收集提供信息,增强对导致观测到的时间模式的复杂动态的理解,并阐明因果机制及其运作的背景。这种因果理解的提高有助于可持续性科学家发展更好的理论,以解释社会和生态过程动态交织且因果知识和数据有限的现象。改进的因果理解也通过帮助科学家和实践者在潜在干预措施之间进行选择、确定干预的时机和重要性以及预测意外结果,从而增强了治理。然而,方法学的整合需要所有相关人员的技能和努力,以了解各自传统的成员如何思考和分析自然-社会系统。