计算机科学
深层神经网络
计算
缩放比例
延迟(音频)
人工智能
图层(电子)
人工神经网络
堆积
深度学习
编码(集合论)
低延迟(资本市场)
并行计算
算法
计算机网络
电信
数学
物理
几何学
集合(抽象数据类型)
有机化学
化学
程序设计语言
核磁共振
作者
Ankit Goyal,Alexey Bochkovskiy,Jia Deng,Vladlen Koltun
出处
期刊:Cornell University - arXiv
日期:2021-01-01
被引量:2
标识
DOI:10.48550/arxiv.2110.07641
摘要
Depth is the hallmark of deep neural networks. But more depth means more sequential computation and higher latency. This begs the question -- is it possible to build high-performing "non-deep" neural networks? We show that it is. To do so, we use parallel subnetworks instead of stacking one layer after another. This helps effectively reduce depth while maintaining high performance. By utilizing parallel substructures, we show, for the first time, that a network with a depth of just 12 can achieve top-1 accuracy over 80% on ImageNet, 96% on CIFAR10, and 81% on CIFAR100. We also show that a network with a low-depth (12) backbone can achieve an AP of 48% on MS-COCO. We analyze the scaling rules for our design and show how to increase performance without changing the network's depth. Finally, we provide a proof of concept for how non-deep networks could be used to build low-latency recognition systems. Code is available at https://github.com/imankgoyal/NonDeepNetworks.
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