CRCLLGOct 30, 2025

PVMark: Enabling Public Verifiability for LLM Watermarking Schemes

arXiv:2510.26274v11 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the problem of opaque detection in LLM watermarking for users and regulators, offering a practical solution to enhance trust in identifying model-generated text.

The paper tackles the trust issue in LLM watermarking by proposing PVMark, a zero-knowledge proof-based plugin that enables public verifiability of watermark detection without disclosing secret keys, achieving efficient performance without compromising watermarking effectiveness.

Watermarking schemes for large language models (LLMs) have been proposed to identify the source of the generated text, mitigating the potential threats emerged from model theft. However, current watermarking solutions hardly resolve the trust issue: the non-public watermark detection cannot prove itself faithfully conducting the detection. We observe that it is attributed to the secret key mostly used in the watermark detection -- it cannot be public, or the adversary may launch removal attacks provided the key; nor can it be private, or the watermarking detection is opaque to the public. To resolve the dilemma, we propose PVMark, a plugin based on zero-knowledge proof (ZKP), enabling the watermark detection process to be publicly verifiable by third parties without disclosing any secret key. PVMark hinges upon the proof of `correct execution' of watermark detection on which a set of ZKP constraints are built, including mapping, random number generation, comparison, and summation. We implement multiple variants of PVMark in Python, Rust and Circom, covering combinations of three watermarking schemes, three hash functions, and four ZKP protocols, to show our approach effectively works under a variety of circumstances. By experimental results, PVMark efficiently enables public verifiability on the state-of-the-art LLM watermarking schemes yet without compromising the watermarking performance, promising to be deployed in practice.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes