LLM Watermark Evasion via Bias Inversion 事件
BREAKTHROUGH2026-05-28影响: HIGH
LLM Watermark Evasion via Bias Inversion arXiv:2509.23019v5 Announce Type: replace-cross Abstract: Watermarking offers a promising solution for detecting LLM-generated content, yet its robustness under realistic query-free (black-box) evasion remains an open challenge. Existing query-free attacks often achieve limited success or severely distort semantic meaning. We bridge this gap by theoretically analyzing rewriting-based evasion, demonstrating that reducing the average conditional probabilit
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LLM Watermark Evasion via Bias Inversion
ArXiv CS.AI2026-05-28