Multiple Choice

A research team uses a general-purpose Large Language Model with the Deliberate-then-Generate (DTG) method to refine machine-translated text. The model is prompted to first identify specific errors in a translation and then, based on that analysis, generate an improved version. The team finds that the final outputs are not consistently better than the originals. What is the most probable point of failure in this process, based on the fundamental assumption of the DTG method?

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Updated 2025-10-01

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