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arxiv:2503.20731

RecTable: Fast Modeling Tabular Data with Rectified Flow

Published on Mar 26
· Submitted by fmuuly on Mar 27
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Abstract

Score-based or diffusion models generate high-quality tabular data, surpassing GAN-based and VAE-based models. However, these methods require substantial training time. In this paper, we introduce RecTable, which uses the rectified flow modeling, applied in such as text-to-image generation and text-to-video generation. RecTable features a simple architecture consisting of a few stacked gated linear unit blocks. Additionally, our training strategies are also simple, incorporating a mixed-type noise distribution and a logit-normal timestep distribution. Our experiments demonstrate that RecTable achieves competitive performance compared to the several state-of-the-art diffusion and score-based models while reducing the required training time. Our code is available at https://github.com/fmp453/rectable.

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We present RecTable, simple architecture and training strategies with rectified flow, achieves the competitive results with SoTA methods for downstream tasks. Moreover, the training time is shorter than other SoTA methods.

code: https://github.com/fmp453/rectable

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