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Efficient and accurate approximations of nonlinear convolutional networks

机译:非线性卷积网络的高效和准确近似

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This paper aims to accelerate the test-time computation of deep convolutional neural networks (CNNs). Unlike existing methods that are designed for approximating linear filters or linear responses, our method takes the nonlinear units into account. We minimize the reconstruction error of the nonlinear responses, subject to a low-rank constraint which helps to reduce the complexity of filters. We develop an effective solution to this constrained nonlinear optimization problem. An algorithm is also presented for reducing the accumulated error when multiple layers are approximated. A whole-model speedup ratio of 4× is demonstrated on a large network trained for ImageNet, while the top-5 error rate is only increased by 0.9%. Our accelerated model has a comparably fast speed as the “AlexNet” [11], but is 4.7% more accurate.
机译:本文旨在加速深度卷积神经网络(CNNS)的测试时间计算。与用于近似线性滤波器或线性响应的现有方法不同,我们的方法考虑了非线性单元。我们最小化非线性响应的重建误差,受到低秩约束,有助于降低滤波器的复杂性。我们为此受约束的非线性优化问题开发了有效的解决方案。还呈现算法以减少多个层近似时累积的误差。在针对想象训练的大型网络上对整个型号的加速比为4倍,而前5个错误率仅增加0.9%。我们加速的模型具有与“AlexNet”[11]相对快的速度,但更准确的4.7%。

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