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MUSE: Model-Agnostic Tabular Watermarking via Multi-Sample Selection

About

We introduce MUSE, a watermarking algorithm for tabular generative models. Previous approaches typically leverage DDIM invertibility to watermark tabular diffusion models, but tabular diffusion models exhibit significantly poorer invertibility compared to other modalities, compromising performance. Simultaneously, tabular diffusion models require substantially less computation than other modalities, enabling a multi-sample selection approach to tabular generative model watermarking. MUSE embeds watermarks by generating multiple candidate samples and selecting one based on a specialized scoring function, without relying on model invertibility. Our theoretical analysis establishes the relationship between watermark detectability, candidate count, and dataset size, allowing precise calibration of watermarking strength. Extensive experiments demonstrate that MUSE achieves state-of-the-art watermark detectability and robustness against various attacks while maintaining data quality, and remains compatible with any tabular generative model supporting repeated sampling, effectively addressing key challenges in tabular data watermarking. Specifically, it reduces the distortion rates on fidelity metrics by 81-89%, while achieving a 1.0 TPR@0.1%FPR detection rate. Implementation of MUSE can be found at https://github.com/fangliancheng/MUSE.

Liancheng Fang, Aiwei Liu, Henry Peng Zou, Yankai Chen, Hengrui Zhang, Zhongfen Deng, Philip S. Yu• 2025

Related benchmarks

TaskDatasetResultRank
Tabular Data WatermarkingAdult
Density92.1
11
Tabular Data WatermarkingShoppers
Density0.911
11
Tabular Data WatermarkingDEFAULT
Density92.8
11
Tabular Data WatermarkingDrybean
Density0.93
11
Tabular Data Watermarkingmagic
Density91.2
11
Watermark robustness against attacksAdult
Error Rate (Row Del. 20%)13.31
10
Watermark robustness against attacksDEFAULT
Row Del. 20% Robustness30.8
5
Watermarking RobustnessDEFAULT
Robustness: Row Deletion32.75
5
Watermark robustness against attacksmagic
Row Deletion Error (20%)31.56
5
Watermark robustness against attacksShoppers
Performance (Row Del. 20%)25.85
5
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