Publication Abstract
- Title
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Towards Reproducible LLM Evaluation: Quantifying Uncertainty in LLM Benchmark Scores
- Publication Abstract
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Large language models (LLMs) are stochastic, and not all models give deterministic answers, even when setting temperature to zero with a fixed random seed. However, few benchmark studies attempt to quantify uncertainty, partly due to the time and cost of repeated experiments. We use benchmarks designed for testing LLMs' capacity to reason about cardinal directions to explore the impact of experimental repeats on mean score and prediction interval. We suggest a simple method for cost-effectively quantifying the uncertainty of a benchmark score and make recommendations concerning reproducible LLM evaluation.
- Publication Authors
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Robert E Blackwell, Jon Barry, Anthony Cohn
- Publication Reference
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NAACL 2025: Computational Linguistics and Large Language Processing Conference.
- Publication Internet Address of the Data
- Publication Date
- Publication DOI: https://doi.org/
- Publication Citation