量化网络

Jiwei Yang, Xu Shen, Jun Xing, Xinmei Tian, Houqiang Li, Bing Deng, Jianqiang Huang, Xiansheng Hua
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引用次数: 229

摘要

尽管深度神经网络非常有效,但其高昂的计算和存储成本严重阻碍了其在便携式设备上的应用。因此,将全精度神经网络转换成低位宽整数形式的低比特量化已成为一个活跃而有前景的研究课题。现有的方法将网络的低比特量化表述为一个近似或优化问题。基于近似的方法面临梯度失配问题,而基于优化的方法只适用于量化权重,并且在训练阶段会引入较高的计算成本。在本文中,我们提供了一种简单和统一的方法来量化权值和激活值,将其表述为一个可微的非线性函数。量化函数表示为几个具有可学习偏差和尺度的Sigmoid函数的线性组合,可以通过连续放松Sigmoid函数的陡峭度以无损和端到端方式学习。在图像分类和目标检测任务上的大量实验表明,我们的量化网络优于最先进的方法。我们相信,该方法将为神经网络量化的解释提供新的思路。
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Quantization Networks
Although deep neural networks are highly effective, their high computational and memory costs severely hinder their applications to portable devices. As a consequence, lowbit quantization, which converts a full-precision neural network into a low-bitwidth integer version, has been an active and promising research topic. Existing methods formulate the low-bit quantization of networks as an approximation or optimization problem. Approximation-based methods confront the gradient mismatch problem, while optimizationbased methods are only suitable for quantizing weights and can introduce high computational cost during the training stage. In this paper, we provide a simple and uniform way for weights and activations quantization by formulating it as a differentiable non-linear function. The quantization function is represented as a linear combination of several Sigmoid functions with learnable biases and scales that could be learned in a lossless and end-to-end manner via continuous relaxation of the steepness of Sigmoid functions. Extensive experiments on image classification and object detection tasks show that our quantization networks outperform state-of-the-art methods. We believe that the proposed method will shed new lights on the interpretation of neural network quantization.
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