Where Does Theory Have It Right? A Comparison of Theory-Driven and Empirical Agent Based Models

F. Taghikhah, T. Filatova, A. Voinov
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引用次数: 18

Abstract

: Computational social science has witnessed a shift from pure theoretical to empirical agent-based models (ABMs) grounded in data-driven correlations between behavioral factors defining agents’ decisions. There is a strong urge to go beyond theoretical ABMs with behavioral theories setting stylized rules that guide agents’ actions, especially when it concerns policy-related simulations. However, it remains unclear to what extent theory-driven ABMs mislead, if at all, a choice of a policy when compared to the outcomes of models with empirical micro-foundations. This is especially relevant for pro-environmental policies that increasingly rely on quantifying cumulative effects of individual behavioral changes, where ABMs are so helpful. We propose a comparison framework to address this methodological dilemma, which quantitatively explores the gap in predictions between theory- and data-driven ABMs. Inspired by the existing theory-driven model, ORVin-T, which studies the individual choice between organic and conventional products, we design a survey to collect data on individual preferences and purchasing decisions. We then use this extensive empirical microdata to build an empirical twin, ORVin-E, replacing the theoretical assumptions and secondary aggregated data used to parametrize agents’ decision strategies with our empirical survey data. We compare the models in terms of key outputs, perform sensitivity analysis, and explore three policy scenarios. We observe that the theory-driven model predicts the shifts to organic consumption as accurately as the ABM with empirical micro-foundations at both aggregated and individual scales. There are slight differences ( ± 5% ) between the estimations of the two models with regard to different behavioral change scenarios: increasing conventional tax, launching organic social-informational campaigns, and their combination. Our findings highlight the goodness of fit and usefulness of theoretical modeling efforts, at least in the case of incremental behavioral change. It sheds light on the conditions when theory-driven and data-driven models are aligned and on the value of empirical data for studying systemic changes.
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理论在哪里是正确的?理论驱动模型与经验Agent模型的比较
计算社会科学已经见证了从纯理论到基于经验的主体模型(ABMs)的转变,该模型基于定义主体决策的行为因素之间的数据驱动相关性。有一种强烈的愿望是超越理论的人工智能,用行为理论来设定指导代理行为的风格化规则,尤其是在涉及到与政策相关的模拟时。然而,与实证微观基础模型的结果相比,理论驱动的ABMs在多大程度上误导了政策选择,如果有的话,目前仍不清楚。这对于越来越依赖于量化个人行为变化的累积效应的亲环境政策尤其重要,而在这方面,abm非常有用。我们提出了一个比较框架来解决这种方法上的困境,该框架定量地探讨了理论驱动和数据驱动的ABMs之间的预测差距。受现有理论驱动模型ORVin-T的启发,我们设计了一项调查,收集个人偏好和购买决策的数据。ORVin-T研究有机产品和传统产品之间的个人选择。然后,我们使用这些广泛的经验微数据来构建一个经验双胞胎,ORVin-E,用我们的经验调查数据取代用于参数化代理决策策略的理论假设和次要汇总数据。我们在关键输出方面比较了这些模型,进行了敏感性分析,并探讨了三种政策情景。我们观察到,理论驱动模型在总体和个体尺度上预测有机消费转变的准确性与基于经验微观基础的ABM一样。对于不同的行为改变情景:增加传统税收,发起有机的社会信息运动,以及它们的组合,两种模型的估计之间存在细微差异(±5%)。我们的研究结果强调了理论建模工作的拟合性和有效性,至少在增量行为改变的情况下是这样。它阐明了理论驱动模型和数据驱动模型相一致的条件,以及研究系统变化的经验数据的价值。
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