Multiple Choice

A team is developing a model to simplify complex medical jargon into plain language for patients. They have successfully trained an encoder-decoder model on a large dataset of medical text and its simplified version. However, when they test the model, they find it frequently produces outputs that are grammatically correct and simple, but factually inaccurate (e.g., changing 'benign tumor' to 'harmless growth' but 'malignant tumor' to 'minor lump'). What is the most likely cause of this specific type of failure?

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Updated 2025-10-05

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