Vu Tuong M, Buckley Charlotte, Bai Hao, Nielsen Alexandra, Probst Charlotte, Brennan Alan, Shuper Paul, Strong Mark, Purshouse Robin C
School of Health and Related Research, University of Sheffield, Sheffield, UK.
Automatic Control and Systems Engineering, University of Sheffield, Sheffield, UK.
Complexity. 2020;2020. doi: 10.1155/2020/8923197. Epub 2020 Jun 5.
The generative approach to social science, in which agent-based simulations (or other complex systems models) are executed to reproduce a known social phenomenon, is an important tool for realist explanation. However, a generative model, when suitably calibrated and validated using empirical data, represents just one viable candidate set of entities and mechanisms. The model only partially addresses the needs of an abductive reasoning process - specifically it does not provide insight into other viable sets of entities or mechanisms, nor suggest which of these are fundamentally constitutive for the phenomenon to exist. In this paper, we propose a new model discovery framework that more fully captures the needs of realist explanation. The framework exploits the implicit ontology of an existing human-built generative model to propose and test a plurality of new candidate model structures. Genetic programming is used to automate this search process. A multi-objective approach is used, which enables multiple perspectives on the value of any particular generative model - such as goodness-of-fit, parsimony, and interpretability - to be represented simultaneously. We demonstrate this new framework using a complex systems modeling case study of change and stasis in societal alcohol use patterns in the US over the period 1980-2010. The framework is successful in identifying three competing explanations of these alcohol use patterns, using novel integrations of social role theory not previously considered by the human modeler. Practitioners in complex systems modeling should use model discovery to improve the explanatory utility of the generative approach to realist social science.
社会科学中的生成性方法,即通过执行基于主体的模拟(或其他复杂系统模型)来重现已知的社会现象,是现实主义解释的重要工具。然而,一个经过适当校准并使用经验数据验证的生成性模型,仅仅代表了一组可行的实体和机制候选集。该模型仅部分满足溯因推理过程的需求——具体而言,它无法深入了解其他可行的实体或机制集,也无法指出其中哪些对于该现象的存在具有根本的构成性。在本文中,我们提出了一个新的模型发现框架,该框架能更全面地满足现实主义解释的需求。该框架利用现有的人工构建生成性模型的隐式本体来提出并测试多个新的候选模型结构。遗传编程被用于自动化这一搜索过程。我们采用了一种多目标方法,它能够同时体现对任何特定生成性模型价值的多个视角——如拟合优度、简约性和可解释性。我们通过一个关于1980 - 2010年美国社会酒精使用模式变化与停滞的复杂系统建模案例研究来展示这个新框架。该框架成功地识别出了这些酒精使用模式的三种相互竞争的解释,采用了人类建模者之前未考虑过的社会角色理论的新颖整合方式。复杂系统建模的从业者应利用模型发现来提高生成性方法对现实主义社会科学的解释效用。