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A large model is being trained using a combined objective. This objective includes a 'distillation loss,' which encourages the large model to mimic the outputs of a smaller, weaker 'teacher' model. It also includes a 'supervised loss,' which is calculated against a set of known correct answers (ground-truth). What is the primary analytical reason for including the 'supervised loss' in this training process?

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Updated 2025-10-06

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