AI RESEARCH

One prompt is not enough: Instruction Sensitivity Undermines Embedding Model Evaluation

arXiv CS.CL

ArXi:2605.22544v1 Announce Type: new Instruction embedding models have become common among state-of-the-art models, however are evaluated using a single prompt per task. The single-point evaluation ignores a main problem of the instruction-based approach namely: sensitivity to the phrasing of the instruction. We present an empirical study of prompt sensitivity across 6 embedding models, 11 datasets, and 15 task-specific prompts per dataset, a total of 990. We show that reported scores misrepresent the distribution of scores over plausible prompts.