A Gift From Knowledge Distillation: Fast Optimization ...
work and a network using various knowledge transfer tech-niques. The third task was transfer learning. Although a new task may provide only a small dataset, transfer learning can take advantage of a deep and heavy DNN pretrained with a huge dataset [2]. Because our proposed method has the advantage of being able to transfer the distilled knowledge
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