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$$ loss = \alpha CE(q, \tilde q) + (1-\alpha) CE(p, q) $$

p为真实标签,q为学生网络输出(经过softmax), $\tilde q$ 为老师网络输出(不经过softmax)再经过softmaxT

前部分称为soft loss,后部分称为hard loss

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