Deep and diverse population synthesis for multi-person households using generative models
Hai Yang, Hongying Wu, Linfei Yuan, Xiyuan Ren, Joseph Y. J. Chow, Jinqin Gao, Kaan Ozbay

TL;DR
This paper introduces a novel deep learning framework, ciDATGAN, for generating high-quality, diverse, and household-structured synthetic populations, improving upon traditional methods and existing deep learning approaches.
Contribution
The study presents the first application of ciDATGAN for household population synthesis, capturing associations among household members and enhancing diversity and accuracy.
Findings
Synthetic population for New York State includes 20 million individuals and 7.5 million households.
The synthetic data matches census marginals well and maintains household associations.
The proposed method is 13-17% more diverse than benchmark and traditional approaches.
Abstract
Synthetic population is an increasingly important material used in numerous areas such as urban and transportation analysis. Traditional methods such as iterative proportional fitting (IPF) is not capable of generating high-quality data when facing datasets with high dimension. Latest population synthesis methods using deep learning techniques can resolve such curse of dimensionality. However, few controls are placed when using these methods, and few of the methods are used to generate synthetic population capturing associations among members in one household. In this study, we propose a framework that tackles these issues. The framework uses a novel population synthesis model, called conditional input directed acyclic tabular generative adversarial network (ciDATGAN), as its core, and a basket of methods are employed to enhance the population synthesis performance. We apply the model…
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