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arxiv: 2503.04474 · v1 · pith:DSFIX7DO · submitted 2025-03-06 · cs.LG · cs.CR

Know Thy Judge: On the Robustness Meta-Evaluation of LLM Safety Judges

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classification cs.LG cs.CR
keywords judgesmodelsafetyadversarialattackscommonlyevaluationsfalse
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Large Language Model (LLM) based judges form the underpinnings of key safety evaluation processes such as offline benchmarking, automated red-teaming, and online guardrailing. This widespread requirement raises the crucial question: can we trust the evaluations of these evaluators? In this paper, we highlight two critical challenges that are typically overlooked: (i) evaluations in the wild where factors like prompt sensitivity and distribution shifts can affect performance and (ii) adversarial attacks that target the judge. We highlight the importance of these through a study of commonly used safety judges, showing that small changes such as the style of the model output can lead to jumps of up to 0.24 in the false negative rate on the same dataset, whereas adversarial attacks on the model generation can fool some judges into misclassifying 100% of harmful generations as safe ones. These findings reveal gaps in commonly used meta-evaluation benchmarks and weaknesses in the robustness of current LLM judges, indicating that low attack success under certain judges could create a false sense of security.

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Cited by 3 Pith papers

Reviewed papers in the Pith corpus that reference this work. Sorted by Pith novelty score.

  1. How Reliable Is Your Jailbreak Judge? Calibration and Adversarial Robustness of Automated ASR Scoring

    cs.CL 2026-06 unverdicted novelty 7.0

    Automated ASR judges (safety classifiers and LLM prompts) show mismatched calibration to humans and low robustness to framing attacks on 596 HarmBench examples, making many reported rates unreliable.

  2. How Reliable Is Your Jailbreak Judge? Calibration and Adversarial Robustness of Automated ASR Scoring

    cs.CL 2026-06 accept novelty 7.0

    Automated judges for LLM jailbreak ASR show opposite calibration failures and low robustness, with LLM judges flipped by benign framing and classifiers vulnerable to white-box attacks.

  3. Reliable to Expressive: A Curriculum for Rubric-Following Safety Judges

    cs.AI 2026-06 conditional novelty 7.0

    A reliable-to-expressive curriculum with dynamic rubrics trains a 12B safety judge to achieve 94%+ accuracy with only 0.76 cross-rubric variance on three different rubric prompts.