Spatial dynamic microsimulations probabilistically project geographically referenced units with individual characteristics over time. Like any projection method, their outcomes are inherently uncertain and sensitive to multiple factors. However, such factors are rarely addressed. Applying variance-based sensitivity analysis to both direct and indirect effects within the employment module of the MikroSim model for Germany, we show that commonly considered sources of uncertainty, namely coefficient and parameter uncertainty, are less influential than qualitative modeling choices. Because dynamic microsimulations are inherently complex and are computationally intensive, it is crucial to consider potential factors of uncertainty and their influence on simulation outputs in order to more carefully design simulation setups and better communicate results. We find, that simple summary measures insufficiently capture overall model uncertainty and urge modelers to account for these broader sources when designing microsimulations and their results.
翻译:空间动态微观模拟以概率方式对具有个体特征的地理参照单元进行时间序列预测。与任何预测方法类似,其结果本质上具有不确定性,并对多种因素敏感。然而,这些因素很少被系统探讨。通过对德国MikroSim模型中就业模块的直接效应与间接效应应用基于方差的敏感性分析,我们发现通常被考虑的不确定性来源(即系数与参数不确定性)的影响小于定性建模选择。由于动态微观模拟本身具有高度复杂性且计算密集,为更审慎地设计模拟方案并更有效地传达结果,必须考虑潜在的不确定性因素及其对模拟输出的影响。我们的研究表明,简单的汇总指标不足以捕捉整体模型不确定性,因此敦促建模者在设计微观模拟及其结果时,应充分考虑这些更广泛的不确定性来源。