LGOct 1, 2025

Population Synthesis using Incomplete Information

arXiv:2510.00859v1h-index: 2Transp Res Procedia
Originality Incremental advance
AI Analysis

This provides a robust solution for population synthesis with incomplete data, which is incremental as it adapts existing WGAN methods to handle missing information.

The paper tackles the problem of generating synthetic populations from incomplete microsamples due to privacy or data constraints by proposing a WGAN training algorithm with a mask matrix, and results show it successfully produces data resembling models trained on complete data and the actual population.

This paper presents a population synthesis model that utilizes the Wasserstein Generative-Adversarial Network (WGAN) for training on incomplete microsamples. By using a mask matrix to represent missing values, the study proposes a WGAN training algorithm that lets the model learn from a training dataset that has some missing information. The proposed method aims to address the challenge of missing information in microsamples on one or more attributes due to privacy concerns or data collection constraints. The paper contrasts WGAN models trained on incomplete microsamples with those trained on complete microsamples, creating a synthetic population. We conducted a series of evaluations of the proposed method using a Swedish national travel survey. We validate the efficacy of the proposed method by generating synthetic populations from all the models and comparing them to the actual population dataset. The results from the experiments showed that the proposed methodology successfully generates synthetic data that closely resembles a model trained with complete data as well as the actual population. The paper contributes to the field by providing a robust solution for population synthesis with incomplete data, opening avenues for future research, and highlighting the potential of deep generative models in advancing population synthesis capabilities.

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