A Systematic Evaluation of Generative Models on Tabular Transportation Data
Journal:
arXiv
Published Date:
Feb 13, 2025
Abstract
The sharing of large-scale transportation data is beneficial for
transportation planning and policymaking. However, it also raises significant
security and privacy concerns, as the data may include identifiable personal
information, such as individuals' home locations. To address these concerns,
synthetic data generation based on real transportation data offers a promising
solution that allows privacy protection while potentially preserving data
utility. Although there are various synthetic data generation techniques, they
are often not tailored to the unique characteristics of transportation data,
such as the inherent structure of transportation networks formed by all trips
in the datasets. In this paper, we use New York City taxi data as a case study
to conduct a systematic evaluation of the performance of widely used tabular
data generative models. In addition to traditional metrics such as distribution
similarity, coverage, and privacy preservation, we propose a novel graph-based
metric tailored specifically for transportation data. This metric evaluates the
similarity between real and synthetic transportation networks, providing
potentially deeper insights into their structural and functional alignment. We
also introduced an improved privacy metric to address the limitations of the
commonly-used one. Our experimental results reveal that existing tabular data
generative models often fail to perform as consistently as claimed in the
literature, particularly when applied to transportation data use cases.
Furthermore, our novel graph metric reveals a significant gap between synthetic
and real data. This work underscores the potential need to develop generative
models specifically tailored to take advantage of the unique characteristics of
emerging domains, such as transportation.