LGAICLFeb 3

Antidistillation Fingerprinting

arXiv:2602.03812v12 citationsh-index: 11
Originality Highly original
AI Analysis

This addresses the need for robust detection mechanisms in model distillation for large language models, offering a significant improvement over existing methods.

The paper tackles the problem of detecting when a third-party student model has trained on a teacher model's outputs, and introduces antidistillation fingerprinting (ADFP), which achieves stronger detection confidence with minimal impact on utility on benchmarks like GSM8K and OASST1.

Model distillation enables efficient emulation of frontier large language models (LLMs), creating a need for robust mechanisms to detect when a third-party student model has trained on a teacher model's outputs. However, existing fingerprinting techniques that could be used to detect such distillation rely on heuristic perturbations that impose a steep trade-off between generation quality and fingerprinting strength, often requiring significant degradation of utility to ensure the fingerprint is effectively internalized by the student. We introduce antidistillation fingerprinting (ADFP), a principled approach that aligns the fingerprinting objective with the student's learning dynamics. Building upon the gradient-based framework of antidistillation sampling, ADFP utilizes a proxy model to identify and sample tokens that directly maximize the expected detectability of the fingerprint in the student after fine-tuning, rather than relying on the incidental absorption of the un-targeted biases of a more naive watermark. Experiments on GSM8K and OASST1 benchmarks demonstrate that ADFP achieves a significant Pareto improvement over state-of-the-art baselines, yielding stronger detection confidence with minimal impact on utility, even when the student model's architecture is unknown.

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