A Fast Method for Agent-Based Model Fitting of Aggregate-Level Diffusion Data

Yuanyuan Xiao, Jingti Han, Zhouping Li, Ziyi Wang
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引用次数: 2

Abstract

This paper provides theoretical arguments and simulation evidence regarding how a differential equation-based diffusion model (DE) can be used to improve the efficiency of an agent-based model (ABM) fitting market-level diffusion data. Using computational experiments, we observe that the DE fits ABM diffusion processes very well and that the linear correlativity between the ABM parameters and their corresponding DE estimates is very well in a wide range of settings. However, as significantly systematic biased forecasts of the DE for ABM diffusion processes exist, the ABM cannot be replaced by the DE to forecast real-world diffusion. Based on these findings, we design a fast parameter estimation method for the ABM by integrating the DE into a component to locate an initial point near the optimal solution.The empirical study demonstrates that the proposed procedure can search out the optimal solution by evaluating only a small number of points. Furthermore, the empirical study also demonstrates that certain ABMs and the simple averaging method have better explanatory and forecasting performance than the DE. This method prepares the ABM to forecast innovation diffusion and also makes a contribution to the literature on the validation of ABM.
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聚合级扩散数据基于agent的快速模型拟合方法
本文提供了关于如何使用基于微分方程的扩散模型(DE)来提高基于主体的模型(ABM)拟合市场层面扩散数据的效率的理论论据和仿真证据。通过计算实验,我们观察到DE非常适合ABM扩散过程,并且在广泛的设置范围内,ABM参数与其相应DE估计之间的线性相关性非常好。然而,由于存在对ABM扩散过程DE的明显系统偏差预测,ABM不能被DE取代来预测现实世界的扩散。基于这些发现,我们设计了一种快速的ABM参数估计方法,通过将DE集成到一个组件中来定位最优解附近的初始点。实证研究表明,所提出的算法只需对少量的点进行评价就能找到最优解。此外,实证研究还表明,某些ABM和简单平均法比DE法具有更好的解释和预测性能。该方法为ABM预测创新扩散做了准备,也为ABM验证的文献做出了贡献。
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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