Methods for Exploring Simulation Models

J. Raimbault, D. Pumain
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引用次数: 2

Abstract

Simulation models are an absolute necessity in the human and social sciences, which can only very exceptionally use experimental science methods to construct their knowledge. Models enable the simulation of social processes by replacing the complex interplay of individual and collective actions and reactions with simpler mathematical or computer mechanisms, making it easier to understand the relationships between the causes and the consequences of these interactions and to make predictions. As the formalism of mathematical models offering analytical solutions is often not suitable for representing social complexity, more and more agent-based computer models are being used. For a long time, the limited computing capacities of computers have hampered programming models that would take into account the interactions between large numbers of geographically located entities (persons or territories). In principle, these models should inform the conditions for the emergence of certain patterns defined at a macro-geographic level from the interactions occurring at a micro-geographic level, in systems whose behaviors are too complex to be understood directly by a human brain. Moreover, it is also necessary to analyze the dynamic behavior of these models with nonlinear feedback effects and verify that they produce plausible results at all stages of their simulation. This essential work of exploring the dynamics of modeled systems remained in its infancy until the late 2010s. Since then, algorithms combining more sophisticated methods, including genetic algorithms and the use of distributed intensive computing, have made it possible to make a significant qualitative leap forward in the exploration and validation of models. The result is an epistemological turn for the human and social sciences, as indicated by the latest applications realized with the help of the OpenMOLE platform presented here.
探索仿真模型的方法
仿真模型在人文科学和社会科学中是绝对必要的,只有在极少数情况下才能使用实验科学方法来构建他们的知识。通过用更简单的数学或计算机机制取代个人和集体行动和反应的复杂相互作用,模型能够模拟社会过程,使人们更容易理解这些相互作用的原因和后果之间的关系,并做出预测。由于提供解析解的数学模型的形式化往往不适合表示社会复杂性,因此越来越多的基于智能体的计算机模型被使用。很长一段时间以来,计算机有限的计算能力阻碍了考虑大量地理位置实体(人或领土)之间相互作用的编程模型。原则上,这些模型应该从微观地理层面上发生的相互作用中为宏观地理层面上定义的某些模式的出现提供条件,这些交互作用发生在行为过于复杂而无法由人类大脑直接理解的系统中。此外,还需要分析这些具有非线性反馈效应的模型的动态行为,并验证它们在模拟的各个阶段都能产生可信的结果。直到2010年代末,探索建模系统动力学的这项重要工作仍处于起步阶段。从那时起,结合更复杂方法的算法,包括遗传算法和分布式密集计算的使用,使得在模型的探索和验证方面有了重大的质的飞跃。其结果是人类和社会科学的认识论转向,正如在这里介绍的OpenMOLE平台帮助下实现的最新应用所表明的那样。
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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