Two-Step Quantization for Low-bit Neural Networks

Peisong Wang, Qinghao Hu, Yifan Zhang, Chunjie Zhang, Yang Liu, Jian Cheng
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引用次数: 113

Abstract

Every bit matters in the hardware design of quantized neural networks. However, extremely-low-bit representation usually causes large accuracy drop. Thus, how to train extremely-low-bit neural networks with high accuracy is of central importance. Most existing network quantization approaches learn transformations (low-bit weights) as well as encodings (low-bit activations) simultaneously. This tight coupling makes the optimization problem difficult, and thus prevents the network from learning optimal representations. In this paper, we propose a simple yet effective Two-Step Quantization (TSQ) framework, by decomposing the network quantization problem into two steps: code learning and transformation function learning based on the learned codes. For the first step, we propose the sparse quantization method for code learning. The second step can be formulated as a non-linear least square regression problem with low-bit constraints, which can be solved efficiently in an iterative manner. Extensive experiments on CIFAR-10 and ILSVRC-12 datasets demonstrate that the proposed TSQ is effective and outperforms the state-of-the-art by a large margin. Especially, for 2-bit activation and ternary weight quantization of AlexNet, the accuracy of our TSQ drops only about 0.5 points compared with the full-precision counterpart, outperforming current state-of-the-art by more than 5 points.
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低比特神经网络的两步量化
在量化神经网络的硬件设计中,每一个比特都至关重要。然而,极低的位表示通常会导致较大的精度下降。因此,如何训练具有高精度的极低比特神经网络是至关重要的。大多数现有的网络量化方法同时学习变换(低比特权重)和编码(低比特激活)。这种紧密耦合使得优化问题变得困难,从而阻止了网络学习最优表示。本文提出了一种简单而有效的两步量化(TSQ)框架,将网络量化问题分解为两个步骤:代码学习和基于学习到的代码的转换函数学习。第一步,我们提出了用于代码学习的稀疏量化方法。第二步可以表示为具有低位约束的非线性最小二乘回归问题,该问题可以通过迭代方式有效地求解。在CIFAR-10和ILSVRC-12数据集上的大量实验表明,所提出的TSQ是有效的,并且在很大程度上优于最先进的TSQ。特别是,对于AlexNet的2位激活和三元权重量化,我们的TSQ精度与全精度相比仅下降了约0.5分,比目前最先进的技术高出5分以上。
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