使用代理模型分析基于代理的模型

G. T. Broeke, G. Voorn, A. Ligtenberg, J. Molenaar
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引用次数: 16

摘要

基于Agent的模型(ABMs)在决策支持和科学应用方面的效用可以通过全面模型行为分析方法的可用性和使用而大大增加。鉴于反弹道导弹的内在结构,必须对其进行数值分析。此外,ABM的行为通常是复杂的,具有很强的非线性、临界点和适应性。这很容易导致高计算成本,呈现出严重的实际限制。模型开发人员和用户都将受益于能够以有限的计算成本探索大部分参数空间的方法。在本文中,我们提出了一种使这成为可能的方法。我们的方法的本质是开发一个基于ABM输出的经济有效的代理模型,使用机器学习来近似ABM仿真数据。开发包括两个步骤,都包含训练和交叉验证的迭代循环。在第一部分中,开发了一种支持向量机(SVM)来将行为空间划分为性质不同的行为区域。在第二部分,支持向量回归(SVR)的发展,以涵盖这些区域内的定量行为。最后,计算敏感性指数,对描述区域边界和区域内定量动态的参数的重要性进行排序。该方法在三个案例研究中得到了证明:一个捕食者-猎物相互作用的微分方程模型、一个公共池资源ABM和一个代表菲律宾金枪鱼渔业的ABM。在所有情况下,模型和相应的代理模型都表现出良好的匹配。此外,与影响潜在定性行为的参数相比,不同的参数显示影响定量结果。因此,该方法有助于区分哪些参数决定了由临界点或用户感兴趣的任何标准分隔的区域之间的参数空间边界。敏感性分析代理模型。我们从100个样本点的训练集开始
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Use of Surrogate Models to Analyse Agent-Based Models
: The utility of Agent Based Models (ABMs) for decision making support as well as for scientific applications can be increased considerably by the availability and use of methodologies for thorough model behaviour analysis. In view of their intrinsic construction, ABMs have to be analysed numerically. Furthermore, ABM behaviour is often complex, featuring strong non-linearities, tipping points, and adaptation. This easily leads to high computational costs, presenting a serious practical limitation. Model developers and users alike would benefit from methodologies that can explore large parts of parameter space at limited computational costs. In this paper we present a methodology that makes this possible. The essence of our approach is to develop a cost-effective surrogate model based on ABM output using machine learning to approximate ABM simulation data. The development consists of two steps, both with iterative loops of training and cross-validation. In the first part, a Support Vector Machine (SVM) is developed to split behaviour space into regions of qualitatively different behaviour. In the second part, a Support Vector Regression (SVR) is developed to cover the quantitative behaviour within these regions. Finally, sensitivity indices are calculated to rank the importance of parameters for describing the boundaries between regions, and for the quantitative dynamics within regions. The methodology is demonstrated in three case studies, a differential equation model of predator-prey interaction, a common-pool resource ABM and an ABM representing the Philippine tuna fishery. In all cases, the model and the corresponding surrogate model show a good match. Furthermore, different parameters are shown to influence the quantitative outcomes, compared to those that influence the underlying qualitative behaviour. Thus, the method helps to distinguish which parameters determine the boundaries in parameter space between regions that are separated by tipping points, or by any criterion of interest to the user. sensitivity analysis surrogate models. we start with a training set of 100 sample points, set
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