观察研究
气候变化
因果推理
归属
反事实思维
生态学
推论
稳健性(进化)
环境资源管理
生物多样性
数据科学
计算机科学
环境科学
计量经济学
人工智能
心理学
生物
经济
数学
社会心理学
基因
统计
生物化学
作者
Joan Dudney,Laura E. Dee,Robert Heilmayr,Jarrett E. K. Byrnes,Katherine Siegel
摘要
ABSTRACT As climate change increasingly affects biodiversity and ecosystem services, a key challenge in ecology is accurate attribution of these impacts. Though experimental studies have greatly advanced our understanding of climate change effects, experimental results are difficult to generalise to real‐world scenarios. To better capture realised impacts, ecologists can use observational data. Disentangling cause and effect using observational data, however, requires careful research design. Here we describe advances in causal inference that can improve climate change attribution in observational settings. Our framework includes five steps: (1) describe the theoretical foundation, (2) choose appropriate observational datasets, (3) estimate the causal relationships of interest, (4) simulate a counterfactual scenario and (5) evaluate results and assumptions using robustness checks. We demonstrate this framework using a pinyon pine case study in North America, and we conclude with a discussion of frontiers in climate change attribution. Our aim is to provide an accessible foundation for applying observational causal inference to estimate climate change effects on ecological systems.
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