Scaling Bit-Flexible Neural Networks

Yun-Nan Chang, Yu-Tang Tin
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引用次数: 2

Abstract

This paper proposes a neural network training scheme in order to obtain the network weights represented in the fixed-point number format such that under the different truncated lengths of the weights, our neural new network can all achieve near-optimized inference accuracy at the corresponding word-length. The similar idea has been explored before; however, the salient feature of our proposed scaling bit-progressive method is we have further taken into account the use and training of weight scaling factor, which can significant improve the inference accuracy. Our experimental results show that our trained Resnet- 18 neural network can improve the top-1 and top-5 accuracies of Tiny-ImageNet dataset by the average of 11.02% and 9.21% compared with the previous work without using the scaling factor. The top-1 and top-5 accuracy losses compared with float-point weights are only about 0.5% and 0.31% under the truncated size of 5-bit. The proposed method can be applied for neural network accelerators especially for those which support bit-serial processing.
缩放位柔性神经网络
为了获得以不动点数格式表示的网络权值,本文提出了一种神经网络训练方案,使我们的神经网络在权值截断长度不同的情况下,都能在相应的字长处达到近似优化的推理精度。类似的想法以前也有人提出过;然而,我们提出的缩放位递进方法的显著特点是我们进一步考虑了权重缩放因子的使用和训练,可以显著提高推理精度。实验结果表明,在不使用比例因子的情况下,我们训练的Resnet- 18神经网络可以将Tiny-ImageNet数据集top-1和top-5的准确率平均提高11.02%和9.21%。截断尺寸为5位的情况下,top-1和top-5的精度损失与浮点权值相比仅为0.5%和0.31%左右。该方法适用于神经网络加速器,特别是支持位串行处理的神经网络加速器。
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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