Empirical Analysis of Knowledge Distillation Technique for Optimization of Quantized Deep Neural Networks
Shin, Sungho, Boo, Yoonho, Sung, Wonyong
Knowledge distillation (KD) is a very popular method for model size reduction. Recently, the technique is exploited for quantized deep neural networks (QDNNs) training as a way to restore the performance sacrificed by word-length reduction. KD, however, employs additional hyper-parameters, such as temperature, coefficient, and the size of teacher network for QDNN training. We analyze the effect of these hyper-parameters for QDNN optimization with KD. We find that these hyper-parameters are inter-related, and also introduce a simple and effective technique that reduces \textit{coefficient} during training. With KD employing the proposed hyper-parameters, we achieve the test accuracy of 92.7% and 67.0% on Resnet20 with 2-bit ternary weights for CIFAR-10 and CIFAR-100 data sets, respectively.
Sep-4-2019
- Country:
- Asia > South Korea > Seoul > Seoul (0.04)
- Genre:
- Research Report (1.00)
- Industry:
- Education (0.96)
- Technology: