Using Multi-objective Grammar-based Genetic Programming to Integrate Multiple Social Theories in Agent-based Modeling.

Tuong Manh Vu, Eli Davies, Charlotte Buckley, Alan Brennan, Robin C Purshouse
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引用次数: 3

Abstract

Different theoretical mechanisms have been proposed for explaining complex social phenomena. For example, explanations for observed trends in population alcohol use have been postulated based on norm theory, role theory, and others. Many mechanism-based models of phenomena attempt to translate a single theory into a simulation model. However, single theories often only represent a partial explanation for the phenomenon. The potential of integrating theories together, computationally, represents a promising way of improving the explanatory capability of generative social science. This paper presents a framework for such integrative model discovery, based on multi-objective grammar-based genetic programming (MOGGP). The framework is demonstrated using two separate theory-driven models of alcohol use dynamics based on norm theory and role theory. The proposed integration considers how the sequence of decisions to consume the next drink in a drinking occasion may be influenced by factors from the different theories. A new grammar is constructed based on this integration. Results of the MOGGP model discovery process find new hybrid models that outperform the existing single-theory models and the baseline hybrid model. Future work should consider and further refine the role of domain experts in defining the meaningfulness of models identified by MOGGP.

基于多目标语法的遗传规划集成多种社会理论的智能体建模。
人们提出了不同的理论机制来解释复杂的社会现象。例如,对观察到的人口酒精使用趋势的解释是基于规范理论、角色理论和其他理论提出的。许多基于机制的现象模型试图将单一理论转化为模拟模型。然而,单一的理论往往只能部分解释这一现象。通过计算将理论整合在一起的潜力,代表了提高生成社会科学解释能力的一种有希望的方式。本文提出了一个基于多目标基于语法的遗传规划(MOGGP)的集成模型发现框架。该框架使用基于规范理论和角色理论的两个独立的理论驱动的酒精使用动态模型进行演示。提出的整合考虑了在饮酒场合下消费下一杯饮料的决定顺序如何受到来自不同理论的因素的影响。基于这种集成构造了一个新的语法。MOGGP模型发现过程的结果发现新的混合模型优于现有的单一理论模型和基线混合模型。未来的工作应该考虑并进一步完善领域专家在定义由MOGGP识别的模型的意义方面的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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