加权平均重参数化加速数据并行神经网络训练

Sterling Ramroach, A. Joshi
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引用次数: 0

摘要

人工智能的最新进展表明,网络的性能与网络中隐藏层的数量之间存在直接关联。CUDA (Compute Unified Device Architecture)框架有助于将繁重的计算从CPU转移到图形处理单元(GPU),并用于加速神经网络的训练。本文研究了数据并行神经网络的训练问题。我们比较了在有数据并行性和没有数据并行性的情况下在GPU上训练同一神经网络的性能。当使用数据并行性时,我们与传统的系数平均方法和我们提出的方法进行了比较。我们开始表明并不是所有的子网络都是相等的,因此,在规范化权向量时不应该被视为相等的。在某些情况下,该方法比传统训练更快地达到了最先进的精度,并且具有更好的分类性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accelerating Data-Parallel Neural Network Training with Weighted-Averaging Reparameterisation
Recent advances in artificial intelligence has shown a direct correlation between the performance of a network and the number of hidden layers within the network. The Compute Unified Device Architecture (CUDA) framework facilitates the movement of heavy computation from the CPU to the graphics processing unit (GPU) and is used to accelerate the training of neural networks. In this paper, we consider the problem of data-parallel neural network training. We compare the performance of training the same neural network on the GPU with and without data parallelism. When data parallelism is used, we compare with both the conventional averaging of coefficients and our proposed method. We set out to show that not all sub-networks are equal and thus, should not be treated as equals when normalising weight vectors. The proposed method achieved state of the art accuracy faster than conventional training along with better classification performance in some cases.
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