CRLGOct 16, 2025

PoTS: Proof-of-Training-Steps for Backdoor Detection in Large Language Models

arXiv:2510.15106v11 citationsh-index: 232025 3rd International Conference on Foundation and Large Language Models (FLLM)
Originality Incremental advance
AI Analysis

This addresses security and accountability issues in LLM development, particularly against insider threats, though it is incremental as it builds on existing verification concepts like Proof-of-Learning.

The paper tackles the problem of detecting backdoor attacks in large language models (LLMs) by introducing a verification protocol that confirms adherence to the declared training recipe, reducing the attacker's success rate even with triggers in up to 10% of training data and enabling early detection 3x faster than training steps.

As Large Language Models (LLMs) gain traction across critical domains, ensuring secure and trustworthy training processes has become a major concern. Backdoor attacks, where malicious actors inject hidden triggers into training data, are particularly insidious and difficult to detect. Existing post-training verification solutions like Proof-of-Learning are impractical for LLMs due to their requirement for full retraining, lack of robustness against stealthy manipulations, and inability to provide early detection during training. Early detection would significantly reduce computational costs. To address these limitations, we introduce Proof-of-Training Steps, a verification protocol that enables an independent auditor (Alice) to confirm that an LLM developer (Bob) has followed the declared training recipe, including data batches, architecture, and hyperparameters. By analyzing the sensitivity of the LLMs' language modeling head (LM-Head) to input perturbations, our method can expose subtle backdoor injections or deviations in training. Even with backdoor triggers in up to 10 percent of the training data, our protocol significantly reduces the attacker's ability to achieve a high attack success rate (ASR). Our method enables early detection of attacks at the injection step, with verification steps being 3x faster than training steps. Our results highlight the protocol's potential to enhance the accountability and security of LLM development, especially against insider threats.

Foundations

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