This repository contains the official models from the paper "Tabular Data Generation using Binary Diffusion", accepted to 3rd Table Representation Learning Workshop @ NeurIPS 2024.
Abstract
Generating synthetic tabular data is critical in machine learning, especially when real data is limited or sensitive. Traditional generative models often face challenges due to the unique characteristics of tabular data, such as mixed data types and varied distributions, and require complex preprocessing or large pretrained models. In this paper, we introduce a novel, lossless binary transformation method that converts any tabular data into fixed-size binary representations, and a corresponding new generative model called Binary Diffusion, specifically designed for binary data. Binary Diffusion leverages the simplicity of XOR operations for noise addition and removal and employs binary cross-entropy loss for training. Our approach eliminates the need for extensive preprocessing, complex noise parameter tuning, and pretraining on large datasets. We evaluate our model on several popular tabular benchmark datasets, demonstrating that Binary Diffusion outperforms existing state-of-the-art models on Travel, Adult Income, and Diabetes datasets while being significantly smaller in size.
Results
The table below presents the Binary Diffusion results across various datasets and models. Performance metrics are shown as mean ± standard deviation.
Dataset | LR (Binary Diffusion) | DT (Binary Diffusion) | RF (Binary Diffusion) | Params |
---|---|---|---|---|
Travel | 83.79 ± 0.08 | 88.90 ± 0.57 | 89.95 ± 0.44 | 1.1M |
Sick | 96.14 ± 0.63 | 97.07 ± 0.24 | 96.59 ± 0.55 | 1.4M |
HELOC | 71.76 ± 0.30 | 70.25 ± 0.43 | 70.47 ± 0.32 | 2.6M |
Adult Income | 85.45 ± 0.11 | 85.27 ± 0.11 | 85.74 ± 0.11 | 1.4M |
Diabetes | 57.75 ± 0.04 | 57.13 ± 0.15 | 57.52 ± 0.12 | 1.8M |
California Housing | 0.55 ± 0.00 | 0.45 ± 0.00 | 0.39 ± 0.00 | 1.5M |
Citation
@article{kinakh2024tabular,
title={Tabular Data Generation using Binary Diffusion},
author={Kinakh, Vitaliy and Voloshynovskiy, Slava},
journal={arXiv preprint arXiv:2409.13882},
year={2024}
}