Diffusion Models for Tabular Data: Challenges, Current Progress, and Future Directions
Zhong Li, Qi Huang, Lincen Yang, Jiayang Shi, Zhao Yang, Niki van, Stein, Thomas B\"ack, Matthijs van Leeuwen

TL;DR
This paper provides a comprehensive review of diffusion models applied to tabular data, highlighting challenges, progress, and future research directions in this emerging field.
Contribution
It systematically summarizes recent developments in diffusion models for tabular data, filling a gap left by the lack of dedicated surveys in this area.
Findings
Diffusion models outperform GANs and VAEs in tabular data tasks.
Significant progress has been made in modeling complex tabular data distributions.
The survey offers a detailed analysis of challenges and future directions in the field.
Abstract
In recent years, generative models have achieved remarkable performance across diverse applications, including image generation, text synthesis, audio creation, video generation, and data augmentation. Diffusion models have emerged as superior alternatives to Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs) by addressing their limitations, such as training instability, mode collapse, and poor representation of multimodal distributions. This success has spurred widespread research interest. In the domain of tabular data, diffusion models have begun to showcase similar advantages over GANs and VAEs, achieving significant performance breakthroughs and demonstrating their potential for addressing unique challenges in tabular data modeling. However, while domains like images and time series have numerous surveys summarizing advancements in diffusion models, there…
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Taxonomy
TopicsData Management and Algorithms · Advanced Database Systems and Queries
MethodsDiffusion
