A Gift from Knowledge Distillation: Fast Optimization, Network Minimization and Transfer Learning

Junho Yim, Donggyu Joo, Ji-Hoon Bae, Junmo Kim
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引用次数: 1195

Abstract

We introduce a novel technique for knowledge transfer, where knowledge from a pretrained deep neural network (DNN) is distilled and transferred to another DNN. As the DNN performs a mapping from the input space to the output space through many layers sequentially, we define the distilled knowledge to be transferred in terms of flow between layers, which is calculated by computing the inner product between features from two layers. When we compare the student DNN and the original network with the same size as the student DNN but trained without a teacher network, the proposed method of transferring the distilled knowledge as the flow between two layers exhibits three important phenomena: (1) the student DNN that learns the distilled knowledge is optimized much faster than the original model, (2) the student DNN outperforms the original DNN, and (3) the student DNN can learn the distilled knowledge from a teacher DNN that is trained at a different task, and the student DNN outperforms the original DNN that is trained from scratch.
知识升华的礼物:快速优化、网络最小化和迁移学习
我们引入了一种新的知识转移技术,将来自预训练深度神经网络(DNN)的知识提取并转移到另一个深度神经网络。当DNN通过多个层依次执行从输入空间到输出空间的映射时,我们根据层间流定义了要传输的提炼知识,这是通过计算两层特征之间的内积来计算的。当我们将学生深度神经网络与原始网络进行比较时(原始网络的大小与学生深度神经网络相同,但没有经过教师网络的训练),所提出的将提炼的知识作为两层之间的流动传输的方法显示出三个重要现象:(1)学习提炼知识的学生DNN比原始模型优化得快得多,(2)学生DNN优于原始DNN,(3)学生DNN可以从在不同任务中训练的教师DNN学习提炼的知识,并且学生DNN优于从头开始训练的原始DNN。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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