AI RESEARCH

The signal is the ceiling: Measurement limits of LLM-predicted experience ratings from open-ended survey text

arXiv CS.CL

ArXi:2604.19645v1 Announce Type: new An earlier paper (Hong, Potteiger, and Zapata 2026) established that an unoptimized GPT 4.1 prompt predicts fan-reported experience ratings within one point 67% of the time from open-ended survey text. This paper tests the relative impact of prompt design and model selection on that performance. We compared four configurations on approximately 10,000 post-game surveys from five MLB teams: the original baseline prompt and a moderately customized version, crossed with three GPT models (4.1, 4.1-mini, 5.2.