Copula-Based Approach to Synthetic Population Generation
Authored by Byungduk Jeong, Wonjoon Lee, Deok-Soo Kim, Hayong Shin
Date Published: 2016
DOI: 10.1371/journal.pone.0159496
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Abstract
Generating synthetic baseline populations is a fundamental step of
agent-based modeling and simulation, which is growing fast in a wide
range of socio-economic areas including transportation planning
research. Traditionally, in many commercial and non-commercial
microsimulation systems, the iterative proportional fitting (IPF)
procedure has been used for creating the joint distribution of
individuals when combining a reference joint distribution with target
marginal distributions. Although IPF is simple, computationally
efficient, and rigorously founded, it is unclear whether IPF well
preserves the dependence structure of the reference joint table
sufficiently when fitting it to target margins. In this paper, a novel
method is proposed based on the copula concept in order to provide an
alternative approach to the problem that IPF resolves. The dependency
characteristic measures were computed and the results from the proposed
method and IPF were compared. In most test cases, the proposed method
outperformed IPF in preserving the dependence structure of the reference
joint distribution.
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