Generating Feasible and Diverse Synthetic Populations Using Diffusion Models
Min Tang, Peng Lu, Qing Feng

TL;DR
This paper introduces a diffusion model-based approach for population synthesis that effectively captures the joint distribution of high-dimensional attributes, producing realistic and diverse synthetic populations while minimizing infeasible combinations.
Contribution
It presents a novel diffusion model method that improves the accuracy and diversity of synthetic populations, addressing limitations of existing deep generative models like VAE and GAN.
Findings
Outperforms VAE and GAN in distribution similarity
Reduces structural zeros in generated populations
Achieves better feasibility-diversity balance
Abstract
Population synthesis is a critical task that involves generating synthetic yet realistic representations of populations. It is a fundamental problem in agent-based modeling (ABM), which has become the standard to analyze intelligent transportation systems. The synthetic population serves as the primary input for ABM transportation simulation, with traveling agents represented by population members. However, when the number of attributes describing agents becomes large, survey data often cannot densely support the joint distribution of the attributes in the population due to the curse of dimensionality. This sparsity makes it difficult to accurately model and produce the population. Interestingly, deep generative models trained from available sample data can potentially synthesize possible attribute combinations that present in the actual population but do not exist in the sample…
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