基于w正则化和变余弦动量的神经网络二值量化方法

Chang Liu, Yingxi Chen
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引用次数: 0

摘要

针对二值量化中权重信息提取不足的问题,提出了一种基于w正则化和变余弦动量的训练模块。w正则化是通过调整网络权值,使权值优化到±1,并根据不同的函数对不同位置的参数进行优化。此外,设计了变余弦动量,使远离±1的参数在高速下趋近于零,可以显著提高收敛速度,进一步提高量化精度。具体来说,它在CIFAR-10、CIFAR-100数据集上比bnn-free的最高准确率分别高出0.83%和2.15%,在SVHN和TinyImage上也有提高。
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A Neural Network Binary Quantization Method Based on W-Regularization and Variable Cosine Momentum
To solve the problem of insufficient extraction of weight information in binary quantization, this paper proposes a new training module based on W-regularization and variable cosine momentum. W-regularization is achieved by adjusting the network weights so that the weight values are optimised to ±1 and the parameters at different positions are optimised according to different functions. In addition, variable cosine momentum is designed so that parameters farther away from ±1 approach zero at high speed, which can significantly increase the speed of convergence and further improve quantization accuracy. Specifically, it outperforms the highest accuracy of bnn-free by 0.83% and 2.15% on the CIFAR-10, CIFAR-100 datasets, it also improved on both SVHN and TinyImage.
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