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Testing and Evaluation of Health Care Applications of Large Language Models
315
Zitationen
19
Autoren
2024
Jahr
Abstract
Existing evaluations of LLMs mostly focus on accuracy of question answering for medical examinations, without consideration of real patient care data. Dimensions such as fairness, bias, and toxicity and deployment considerations received limited attention. Future evaluations should adopt standardized applications and metrics, use clinical data, and broaden focus to include a wider range of tasks and specialties.
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