AI RESEARCH

What Single-Prompt Accuracy Misses: A Multi-Variant Reliability Audit of Language Models

arXiv CS.CL

ArXi:2605.02038v1 Announce Type: new Single-prompt accuracy is the dominant way to benchmark language models, but it can miss reliability failures that matter. We evaluate a 15-model open-weight corpus, with the main reliability analyses focused on 10 instruct models across five classification and reasoning benchmarks under five prompt variants each, measuring accuracy, token-probability calibration, verbal-confidence calibration, verbal parse rate, and prompt-perturbation spread for every (model x dataset x variant) cell. We find three broad results.