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Main Authors: Dumont, Morgane, Alsaloum, Ahmed, Ernst, Julian, Weymeirsch, Jan, Münnich, Ralf
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2511.14294
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author Dumont, Morgane
Alsaloum, Ahmed
Ernst, Julian
Weymeirsch, Jan
Münnich, Ralf
author_facet Dumont, Morgane
Alsaloum, Ahmed
Ernst, Julian
Weymeirsch, Jan
Münnich, Ralf
contents 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.
format Preprint
id arxiv_https___arxiv_org_abs_2511_14294
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Uncertainty assessment of spatial dynamic microsimulations
Dumont, Morgane
Alsaloum, Ahmed
Ernst, Julian
Weymeirsch, Jan
Münnich, Ralf
Computation
Applications
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.
title Uncertainty assessment of spatial dynamic microsimulations
topic Computation
Applications
url https://arxiv.org/abs/2511.14294