受蝴蝶结构启发的稀疏神经网络拓扑

D. Puchala, K. Stokfiszewski
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引用次数: 0

摘要

在本文中,我们提出了稀疏神经网络的拓扑,其灵感来自于选择线性变换的快速计算蝴蝶结构,即:快速离散余弦变换和贝内斯网络样拓扑。我们证明,稀疏神经网络允许获得大量的算术运算和神经结构所需的权重减少,同时在密集神经网络找到其应用的选定任务中保持良好的效率。为了验证所考虑的结构的有效性,我们在数据压缩和图像识别方面进行了一系列的实验。得到的实验结果证实了所考虑的稀疏神经结构的良好效率,并表明这种拓扑结构允许为了重用训练好的神经网络而必须训练和存储的算术运算和权重的数量显著减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sparse Neural Networks with Topologies Inspired by Butterfly Structures
In this paper we propose sparse neural networks with topologies inspired by fast computational butterfly structures of selected linear transforms, namely: fast discrete cosine transform, and Beneš network like topologies. We demonstrate that sparse neural networks allow to obtain high reduction in the number of arithmetic operations and weights needed by neural structures while preserving good efficiency in selected tasks where dense neural networks find their applications. In order to verify the efficiency of the considered structures we conducted a series of experiments in data compression and image recognition. The obtained experimental results confirm good efficiency of the considered sparse neural structures and reveal that such topologies allow for significant reduction in the number of arithmetic operations and weights that must be trained and stored in order to re-use trained neural networks.
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