完善因果循环图:在计算系统动力学建模中最大化领域专业知识贡献的教程。

IF 7.6 1区 心理学 Q1 PSYCHOLOGY, MULTIDISCIPLINARY Psychological methods Pub Date : 2024-02-01 Epub Date: 2022-05-12 DOI:10.1037/met0000484
Loes Crielaard, Jeroen F Uleman, Bas D L Châtel, Sacha Epskamp, Peter M A Sloot, Rick Quax
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引用次数: 0

摘要

人们日益认识到,复杂性科学和系统思维是研究生物、心理和社会环境因素相互作用的系统的相关范式。然而,系统思维的应用往往止步于开发一个概念模型,将系统内的因果联系映射可视化,如因果循环图(CLD)。虽然这本身就是一项重要贡献,但随后必须制定一个可计算版本的因果循环图,以解释建模系统的动态并模拟 "假设 "情景。我们建议通过从生物-心理-社会领域的专家心智模型中获取知识来实现这一点。本文首先介绍了将专家知识纳入计算系统动力学模型(SDM)所需的步骤。为此,我们在 CLD 中引入了几个注释,以促进这种预期转换。这种注释式 CLD(aCLD)包括证据来源、中间变量、因果联系的功能形式以及不确定因果联系和已知不存在因果联系之间的区别。我们提出了一种开发包含这些注释的 aCLD 的算法。然后,我们将介绍如何基于 aCLD 制定 SDM。所描述的转换步骤有助于识别、量化和潜在地减少不确定性来源,并获得对 SDM 模拟结果的信心。我们利用一个运行示例来说明这一转换过程的每个步骤。本文所描述的系统方法促进并推动了计算科学方法在生物心理社会系统中的应用。(PsycInfo 数据库记录 (c) 2024 APA,保留所有权利)。
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Refining the causal loop diagram: A tutorial for maximizing the contribution of domain expertise in computational system dynamics modeling.

Complexity science and systems thinking are increasingly recognized as relevant paradigms for studying systems where biology, psychology, and socioenvironmental factors interact. The application of systems thinking, however, often stops at developing a conceptual model that visualizes the mapping of causal links within a system, e.g., a causal loop diagram (CLD). While this is an important contribution in itself, it is imperative to subsequently formulate a computable version of a CLD in order to interpret the dynamics of the modeled system and simulate "what if" scenarios. We propose to realize this by deriving knowledge from experts' mental models in biopsychosocial domains. This article first describes the steps required for capturing expert knowledge in a CLD such that it may result in a computational system dynamics model (SDM). For this purpose, we introduce several annotations to the CLD that facilitate this intended conversion. This annotated CLD (aCLD) includes sources of evidence, intermediary variables, functional forms of causal links, and the distinction between uncertain and known-to-be-absent causal links. We propose an algorithm for developing an aCLD that includes these annotations. We then describe how to formulate an SDM based on the aCLD. The described steps for this conversion help identify, quantify, and potentially reduce sources of uncertainty and obtain confidence in the results of the SDM's simulations. We utilize a running example that illustrates each step of this conversion process. The systematic approach described in this article facilitates and advances the application of computational science methods to biopsychosocial systems. (PsycInfo Database Record (c) 2024 APA, all rights reserved).

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来源期刊
Psychological methods
Psychological methods PSYCHOLOGY, MULTIDISCIPLINARY-
CiteScore
13.10
自引率
7.10%
发文量
159
期刊介绍: Psychological Methods is devoted to the development and dissemination of methods for collecting, analyzing, understanding, and interpreting psychological data. Its purpose is the dissemination of innovations in research design, measurement, methodology, and quantitative and qualitative analysis to the psychological community; its further purpose is to promote effective communication about related substantive and methodological issues. The audience is expected to be diverse and to include those who develop new procedures, those who are responsible for undergraduate and graduate training in design, measurement, and statistics, as well as those who employ those procedures in research.
期刊最新文献
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