The evaluation illusion of large language models in medicine
Monica Agrawal, Irene Y. Chen, Freya Gulamali, Shalmali Joshi
Abstract
While large language models (LLMs) hold promise for transforming clinical healthcare, current comparisons and benchmark evaluations of large language models in medicine often fail to capture real-world efficacy. Specifically, we highlight how key discrepancies arising from choices of data, tasks, and metrics can limit meaningful assessment of translational impact and cause misleading conclusions. Therefore, we advocate for rigorous, context-aware evaluations and experimental transparency across both research and deployment.
Topics & Concepts
Transparency (behavior)Computer scienceIllusionLanguage modelPsychologyKey (lock)Cognitive psychologyArtificial intelligenceLimit (mathematics)Data scienceLanguage understandingNatural language processingBenchmark (surveying)Cognitive scienceManagement scienceLinguisticsOn LanguageQuality (philosophy)Machine Learning in HealthcareTopic ModelingArtificial Intelligence in Healthcare and Education