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Assessing ChatGPT-4’s performance on the US prosthodontic exam: impact of fine-tuning and contextual prompting vs. base knowledge, a cross-sectional study
8
Zitationen
9
Autoren
2025
Jahr
Abstract
Fine-tuning ChatGPT-4 with specific resources significantly enhances its accuracy in answering specialized prosthodontic exam questions. While the base model provides a solid baseline, fine-tuning is essential for improving AI performance in specialized fields. However, certain topics may require more targeted training to achieve higher accuracy.
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