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arxiv: 2310.07710 · v2 · pith:QCPHQUMPnew · submitted 2023-10-11 · 💻 cs.CR · cs.CL· cs.LG

A Resilient and Accessible Distribution-Preserving Watermark for Large Language Models

classification 💻 cs.CR cs.CLcs.LG
keywords watermarkingdistribution-preservinglanguagedistributionmodelstokensaccessiblecontent
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Watermarking techniques offer a promising way to identify machine-generated content via embedding covert information into the contents generated from language models. A challenge in the domain lies in preserving the distribution of original generated content after watermarking. Our research extends and improves upon existing watermarking framework, placing emphasis on the importance of a \textbf{Di}stribution-\textbf{P}reserving (DiP) watermark. Contrary to the current strategies, our proposed DiPmark simultaneously preserves the original token distribution during watermarking (distribution-preserving), is detectable without access to the language model API and prompts (accessible), and is provably robust to moderate changes of tokens (resilient). DiPmark operates by selecting a random set of tokens prior to the generation of a word, then modifying the token distribution through a distribution-preserving reweight function to enhance the probability of these selected tokens during the sampling process. Extensive empirical evaluation on various language models and tasks demonstrates our approach's distribution-preserving property, accessibility, and resilience, making it a effective solution for watermarking tasks that demand impeccable quality preservation.

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Cited by 3 Pith papers

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  1. Optimal Multi-bit Generative Watermarking Schemes Under Worst-Case False-Alarm Constraints

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    TextSeal provides a localized, distortion-free LLM watermark that enables provenance tracking and distillation detection while preserving performance and text quality.

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    TextSeal provides a localized, distortion-free LLM watermark that outperforms baselines in detection strength, remains effective in mixed human-AI text, preserves model performance, and transfers through distillation ...