A demographic microsimulation model with an integrated household alignment method
Many dynamic microsimulation models have shown their ability to reasonably project detailed population and households using non-data based household formation and dissolution rules. Although, those rules allow modellers to simplify changes in the household construction, they typically fall short in...
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Zusammenfassung: | Many dynamic microsimulation models have shown their ability to reasonably
project detailed population and households using non-data based household
formation and dissolution rules. Although, those rules allow modellers to
simplify changes in the household construction, they typically fall short in
replicating household projections or if applied retrospectively the observed
household numbers. Consequently, such models with biased estimation for
household size and other household related attributes lose their usefulness in
applications that are sensitive to household size, such as in travel demand and
housing demand modelling. Nonetheless, these demographic microsimulation models
with their associated shortcomings have been commonly used to assess various
planning policies which can result in misleading judgements. In this paper, we
contribute to the literature of population microsimulation by introducing a
fully integrated system of models for different life event where a household
alignment method adjusts household size distribution to closely align with any
given target distribution. Furthermore, some demographic events that are
generally difficult to model, such as incorporating immigrant families into a
population, can be included. We illustrated an example of the household
alignment method and put it to test in a dynamic microsimulation model that we
developed using dymiumCore, a general-purpose microsimulation toolkit in R, to
show potential improvements and weaknesses of the method. The implementation of
this model has been made publicly available on GitHub. |
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DOI: | 10.48550/arxiv.2006.09474 |