Multiple Choice

A research team is using a two-stage process to train a very large model. They start with a massive, noisy dataset. In the first stage, they use a small, less powerful model to process this data. In the second stage, they use the output of the first stage to fine-tune their large model. However, the large model's performance is not improving. Their specific implementation was to have the small model generate new labels for the entire initial dataset, and then train the large model on this complete, re-labeled dataset. Based on the principle of using a weaker model to efficiently guide a stronger one, what is the most likely flaw in their methodology?

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Updated 2025-10-06

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