因果推理
因果关系(物理学)
推论
因果模型
观察研究
生态学
计算机科学
随机试验
数据科学
计量经济学
人工智能
数学
生物
统计
量子力学
物理
作者
Kaitlin Kimmel,Laura E. Dee,Meghan L. Avolio,Paul J. Ferraro
标识
DOI:10.1016/j.tree.2021.08.008
摘要
Causal inferences from experimental data are often justified based on treatment randomization. However, inferring causality from data also requires complementary causal assumptions, which have been formalized by scholars of causality but not widely discussed in ecology. While ecologists have recognized challenges to inferring causal relationships in experiments and developed solutions, they lack a general framework to identify and address them. We review four assumptions required to infer causality from experiments and provide design-based and statistically based solutions for when these assumptions are violated. We conclude that there is no clear demarcation between experimental and non-experimental designs. This insight can help ecologists design better experiments and remove barriers between experimental and observational scholarship in ecology.
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