MorphMark: Flexible Adaptive Watermarking for Large Language Models
- URL: http://arxiv.org/abs/2505.11541v2
- Date: Tue, 20 May 2025 00:24:09 GMT
- Title: MorphMark: Flexible Adaptive Watermarking for Large Language Models
- Authors: Zongqi Wang, Tianle Gu, Baoyuan Wu, Yujiu Yang,
- Abstract summary: Existing watermark methods often struggle with a dilemma: improving watermark effectiveness comes at the cost of reduced text quality.<n>We develop MorphMark method that adaptively adjusts the watermark strength in response to changes in the identified factor.<n>MorphMark achieves a superior resolution of the effectiveness-quality dilemma, while also offering greater flexibility and time and space efficiency.
- Score: 49.3302421751894
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Watermarking by altering token sampling probabilities based on red-green list is a promising method for tracing the origin of text generated by large language models (LLMs). However, existing watermark methods often struggle with a fundamental dilemma: improving watermark effectiveness (the detectability of the watermark) often comes at the cost of reduced text quality. This trade-off limits their practical application. To address this challenge, we first formalize the problem within a multi-objective trade-off analysis framework. Within this framework, we identify a key factor that influences the dilemma. Unlike existing methods, where watermark strength is typically treated as a fixed hyperparameter, our theoretical insights lead to the development of MorphMarka method that adaptively adjusts the watermark strength in response to changes in the identified factor, thereby achieving an effective resolution of the dilemma. In addition, MorphMark also prioritizes flexibility since it is a model-agnostic and model-free watermark method, thereby offering a practical solution for real-world deployment, particularly in light of the rapid evolution of AI models. Extensive experiments demonstrate that MorphMark achieves a superior resolution of the effectiveness-quality dilemma, while also offering greater flexibility and time and space efficiency.
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