从文本到地图:构建因果循环图的系统动力学机器人

IF 1.7 3区 管理学 Q3 MANAGEMENT
Niyousha Hosseinichimeh, Aritra Majumdar, Ross Williams, Navid Ghaffarzadegan
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引用次数: 0

摘要

我们介绍并测试了 "系统动力学机器人"(System Dynamics Bot),这是一个利用大型语言模型自动从文本数据创建因果循环图的计算机程序。为了评估其性能,我们建立了两个不同的数据库。第一个数据集包括 20 个因果循环图和来自系统动力学文献的相关文本。第二个数据集包括 30 位参与者对一个小故事的回答,以及由三位系统动力学建模人员编码的因果循环图。机器人使用文本数据,成功识别了两个数据集中约 60% 的变量和反馈回路之间的联系。本文概述了我们的方法,提供了示例,并介绍了评估结果。我们讨论了在开发系统动力学机器人过程中遇到的挑战和实施的解决方案。该机器人有助于从文本数据中提取心智模型,并改进模型构建过程。此外,这两个数据集可作为类似程序的测试平台。©2024年作者。系统动力学评论》由 John Wiley & Sons 有限公司代表系统动力学学会出版。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
From text to map: a system dynamics bot for constructing causal loop diagrams
We introduce and test the System Dynamics Bot, a computer program leveraging a large language model to automate the creation of causal loop diagrams from textual data. To evaluate its performance, we ensembled two distinct databases. The first dataset includes 20 causal loop diagrams and associated texts sourced from the system dynamics literature. The second dataset comprises responses from 30 participants to a vignette, along with causal loop diagrams coded by three system dynamics modelers. The bot uses textual data and successfully identifies approximately 60% of the links between variables and feedback loops in both datasets. This article outlines our approach, provides examples, and presents evaluation results. We discuss encountered challenges and implemented solutions in developing the System Dynamics Bot. The bot can facilitate extracting mental models from textual data and improve model‐building processes. Moreover, the two datasets can serve as a test‐bed for similar programs. © 2024 The Author(s). System Dynamics Review published by John Wiley & Sons Ltd on behalf of System Dynamics Society.
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来源期刊
CiteScore
6.60
自引率
8.30%
发文量
22
期刊介绍: The System Dynamics Review exists to communicate to a wide audience advances in the application of the perspectives and methods of system dynamics to societal, technical, managerial, and environmental problems. The Review publishes: advances in mathematical modelling and computer simulation of dynamic feedback systems; advances in methods of policy analysis based on information feedback and circular causality; generic structures (dynamic feedback systems that support particular widely applicable behavioural insights); system dynamics contributions to theory building in the social and natural sciences; policy studies and debate emphasizing the role of feedback and circular causality in problem behaviour.
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