Causal inference in coupled human and natural systems.

Proc Natl Acad Sci U S A

Nicholas School of the Environment, Duke University, Durham, NC 27708;

Published: March 2019

AI Article Synopsis

  • Coupled human and natural systems (CHANS) are intricate systems where social and environmental factors interact, making it challenging to establish clear causal relationships due to assumptions like excludability and absence of interference.
  • Much of the existing CHANS literature, especially regarding marine protected areas, tends to overlook these assumptions, complicating causal claims made in nearly 200 studies.
  • To better understand CHANS, researchers need to explore various methods to identify biases and gather insights from different disciplines, emphasizing the importance of collaboration between academics and practitioners in sustainability science.

Article Abstract

Coupled human and natural systems (CHANS) are complex, dynamic, interconnected systems with feedback across social and environmental dimensions. This feedback leads to formidable challenges for causal inference. Two significant challenges involve assumptions about excludability and the absence of interference. These two assumptions have been largely unexplored in the CHANS literature, but when either is violated, causal inferences from observable data are difficult to interpret. To explore their plausibility, structural knowledge of the system is requisite, as is an explicit recognition that most causal variables in CHANS affect a coupled pairing of environmental and human elements. In a large CHANS literature that evaluates marine protected areas, nearly 200 studies attempt to make causal claims, but few address the excludability assumption. To examine the relevance of interference in CHANS, we develop a stylized simulation of a marine CHANS with shocks that can represent policy interventions, ecological disturbances, and technological disasters. Human and capital mobility in CHANS is both a cause of interference, which biases inferences about causal effects, and a moderator of the causal effects themselves. No perfect solutions exist for satisfying excludability and interference assumptions in CHANS. To elucidate causal relationships in CHANS, multiple approaches will be needed for a given causal question, with the aim of identifying sources of bias in each approach and then triangulating on credible inferences. Within CHANS research, and sustainability science more generally, the path to accumulating an evidence base on causal relationships requires skills and knowledge from many disciplines and effective academic-practitioner collaborations.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6431173PMC
http://dx.doi.org/10.1073/pnas.1805563115DOI Listing

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