理解选择建模者的决策过程

IF 2.4 3区 经济学 Q1 ECONOMICS
Gabriel Nova , Sander van Cranenburgh , Stephane Hess
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引用次数: 0

摘要

选择模型是一个广泛使用的框架,用于理解跨学科的人类选择行为。建立选择模型是一个复杂的、半结构化的过程,涉及到先验假设、行为理论和统计方法的结合。这种复杂的决策集,加上不同的工作流程,会导致模型结果的大量变化。为了研究这些建模过程,我们引入了离散选择建模严肃博弈(DCM-SG),这是一种模仿选择建模者工作流程并跟踪参与者建模决策的新工具。在我们的应用中,参与者开发了模型来估计减少噪音污染的支付意愿值。他们的行为被跟踪,从而能够分析工作流程模式和建模策略。40名参与者完成了这款游戏,其中大多数都有5年以上的经验。我们的贡献是双重的。在方法上,DCM-SG捕获建模人员工作流程上的顺序数据,我们使用遥测和顺序模式挖掘技术对其进行分析,以揭示游戏内工具使用、相变和模型规范方法的动态模式。从本质上讲,人们更倾向于数据可视化和简单模型(多项式Logit)的频繁规范,同时试图指定更复杂的模型。这些发现表明,在时间有限或资源有限的情况下,建模者可能没有充分考虑协变量、非线性和复杂规格等重要因素。此外,更深入地参与数据探索和迭代模型比较的参与者一致地获得了更好的模型拟合和简约性。这些结果展示了DCM-SG的顺序数据如何揭示建模实践中的变化,并为理解选择建模的艺术提供了基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Understanding the decision-making process of choice modellers
Choice Modelling is a widely used framework for understanding human choice behaviour across disciplines. Building a choice model is a complex, semi-structured process that involves a combination of prior assumptions, behavioural theories, and statistical methods. This complex set of decisions, coupled with diverse workflows, can lead to substantial variability in model outcomes. To investigate these modelling processes, we introduce the Discrete Choice Modelling Serious Game (DCM-SG), a novel tool that mimics the workflow of choice modellers and tracks the modelling decisions participants make. In our application, participants developed models to estimate willingness-to-pay values for reducing noise pollution. Their actions were tracked, enabling analysis of workflow patterns and modelling strategies. Forty participants, most with over five years of experience, completed the game. Our contributions are twofold. Methodologically, the DCM-SG captures sequential data on modellers’ workflows, which we analyse using telemetry and sequential pattern mining techniques to uncover dynamic patterns of in-game tool usage, phase transitions, and model specification approaches. Substantively, there was a strong preference for data visualisation and frequent specification of simpler models (Multinomial Logit), alongside attempts to specify more complex models. These findings suggest that in time-constrained or resource-limited settings, modellers may underexplore important factors such as covariates, non-linearities, and complex specifications. Moreover, participants who engaged more thoroughly in data exploration and iterative model comparison consistently achieved superior model fit and parsimony. These results demonstrate how sequential data from the DCM-SG can uncover variations in modelling practices and provide a foundation for understanding the art of choice modelling.
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来源期刊
CiteScore
4.10
自引率
12.50%
发文量
31
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