将基于模型的实验作为古生态学的认识论证据

IF 2.6 3区 环境科学与生态学 Q2 ECOLOGY Ecological Modelling Pub Date : 2024-10-02 DOI:10.1016/j.ecolmodel.2024.110895
Wolfgang Traylor
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引用次数: 0

摘要

在不可能进行普通实验、观测数据稀缺且间接的地方(尤其是在古生态系统中),计算实验往往是我们了解现实的唯一途径。我们有充分的理由将这些基于模型的预测视为证据,以检验假设并更新我们对世界的信念。然而,计算实验在认识论上的权重取决于目标系统的充分模型表征、预测不确定性的透明度以及确认偏见的避免。我认为,机理模型尤其适合古生态预测,但应通过迭代不确定性分析来指导模型的开发。利用贝叶斯框架,我建议将预注册和盲分析作为加强计算实验认识价值的工具。在这里,预注册标志着探索性模型开发与预测性模型应用之间的界限,前者确立了模型的可信度,后者则检验了假设。作为良好的建模实践,我建议在项目一开始就明确认识论目标,并据此选择方法,最大限度地提高计算实验的认识论权重。
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Model-based experiments as epistemic evidence in paleoecology
Where ordinary experiments are impossible and observational data scarce and indirect  particularly in paleoecosystems  computational experiments are often our only means to learn about reality. There are good arguments to count such model-based predictions as evidence, testing hypotheses and updating our beliefs about the world. However, the epistemic weight of computational experiments depends on an adequate model representation of the target system, transparency about predictive uncertainty, and the avoidance of confirmation bias. I argue that mechanistic models are particularly suited for paleoecological predictions but that iterative uncertainty analyses should guide their development. Using a Bayesian framework I propose preregistration and blinded analysis as tools to strengthen the epistemic value of computational experiments. Here, a preregistration marks the boundary between exploratory model development, which establishes credence in the model, and predictive model application, which tests hypotheses. As good modeling practice I suggest clarifying epistemic goals at the outset of a project and accordingly choose methods to maximize the epistemic weight of the computational experiment.
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来源期刊
Ecological Modelling
Ecological Modelling 环境科学-生态学
CiteScore
5.60
自引率
6.50%
发文量
259
审稿时长
69 days
期刊介绍: The journal is concerned with the use of mathematical models and systems analysis for the description of ecological processes and for the sustainable management of resources. Human activity and well-being are dependent on and integrated with the functioning of ecosystems and the services they provide. We aim to understand these basic ecosystem functions using mathematical and conceptual modelling, systems analysis, thermodynamics, computer simulations, and ecological theory. This leads to a preference for process-based models embedded in theory with explicit causative agents as opposed to strictly statistical or correlative descriptions. These modelling methods can be applied to a wide spectrum of issues ranging from basic ecology to human ecology to socio-ecological systems. The journal welcomes research articles, short communications, review articles, letters to the editor, book reviews, and other communications. The journal also supports the activities of the [International Society of Ecological Modelling (ISEM)](http://www.isemna.org/).
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