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Risk Management for Mitigating Benchmark Failure Modes: BenchRisk

Software Engineering 2025-10-27 v1 Computers and Society Machine Learning

Abstract

Large language model (LLM) benchmarks inform LLM use decisions (e.g., "is this LLM safe to deploy for my use case and context?"). However, benchmarks may be rendered unreliable by various failure modes that impact benchmark bias, variance, coverage, or people's capacity to understand benchmark evidence. Using the National Institute of Standards and Technology's risk management process as a foundation, this research iteratively analyzed 26 popular benchmarks, identifying 57 potential failure modes and 196 corresponding mitigation strategies. The mitigations reduce failure likelihood and/or severity, providing a frame for evaluating "benchmark risk," which is scored to provide a metaevaluation benchmark: BenchRisk. Higher scores indicate that benchmark users are less likely to reach an incorrect or unsupported conclusion about an LLM. All 26 scored benchmarks present significant risk within one or more of the five scored dimensions (comprehensiveness, intelligibility, consistency, correctness, and longevity), which points to important open research directions for the field of LLM benchmarking. The BenchRisk workflow allows for comparison between benchmarks; as an open-source tool, it also facilitates the identification and sharing of risks and their mitigations.

Keywords

Cite

@article{arxiv.2510.21460,
  title  = {Risk Management for Mitigating Benchmark Failure Modes: BenchRisk},
  author = {Sean McGregor and Victor Lu and Vassil Tashev and Armstrong Foundjem and Aishwarya Ramasethu and Sadegh AlMahdi Kazemi Zarkouei and Chris Knotz and Kongtao Chen and Alicia Parrish and Anka Reuel and Heather Frase},
  journal= {arXiv preprint arXiv:2510.21460},
  year   = {2025}
}

Comments

19 pages, 7 figures, to be published in the 39th Conference on Neural Information Processing Systems (NeurIPS 2025)

R2 v1 2026-07-01T07:03:57.682Z