Dynamic Recursive Neural Network

Qiushan Guo, Zhipeng Yu, Yichao Wu, Ding Liang, Haoyu Qin, Junjie Yan
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引用次数: 41

Abstract

This paper proposes the dynamic recursive neural network (DRNN), which simplifies the duplicated building blocks in deep neural network. Different from forwarding through different blocks sequentially in previous networks, we demonstrate that the DRNN can achieve better performance with fewer blocks by employing block recursively. We further add a gate structure to each block, which can adaptively decide the loop times of recursive blocks to reduce the computational cost. Since the recursive networks are hard to train, we propose the Loopy Variable Batch Normalization (LVBN) to stabilize the volatile gradient. Further, we improve the LVBN to correct statistical bias caused by the gate structure. Experiments show that the DRNN reduces the parameters and computational cost and while outperforms the original model in term of the accuracy consistently on CIFAR-10 and ImageNet-1k. Lastly we visualize and discuss the relation between image saliency and the number of loop time.
动态递归神经网络
本文提出了动态递归神经网络(DRNN),简化了深度神经网络中重复构建块的问题。与以往网络中不同的块顺序转发不同,我们证明了DRNN通过递归地使用块可以在更少的块上获得更好的性能。我们进一步在每个块中加入一个门结构,它可以自适应地决定递归块的循环次数,从而降低计算成本。由于递归网络难以训练,我们提出了环路变量批归一化(LVBN)来稳定波动梯度。进一步,我们改进了LVBN,以纠正由栅极结构引起的统计偏差。实验表明,在CIFAR-10和ImageNet-1k上,DRNN减少了参数和计算成本,同时在准确率方面优于原模型。最后,我们可视化并讨论了图像显著性与循环时间的关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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