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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >You Only Search Once: Single Shot Neural Architecture Search via Direct Sparse Optimization
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You Only Search Once: Single Shot Neural Architecture Search via Direct Sparse Optimization

机译:您只搜索一次:单次射击神经结构通过直接稀疏优化搜索

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摘要

Recently neural architecture search (NAS) has raised great interest in both academia and industry. However, it remains challenging because of its huge and non-continuous search space. Instead of applying evolutionary algorithm or reinforcement learning as previous works, this paper proposes a direct sparse optimization NAS (DSO-NAS) method. The motivation behind DSO-NAS is to address the task in the view of model pruning. To achieve this goal, we start from a completely connected block, and then introduce scaling factors to scale the information flow between operations. Next, sparse regularizations are imposed to prune useless connections in the architecture. Lastly, an efficient and theoretically sound optimization method is derived to solve it. Our method enjoys both advantages of differentiability and efficiency, therefore it can be directly applied to large datasets like ImageNet and tasks beyond classification. Particularly, on the CIFAR-10 dataset, DSO-NAS achieves an average test error 2.74 percent, while on the ImageNet dataset DSO-NAS achieves 25.4 percent test error under 600M FLOPs with 8 GPUs in 18 hours. As for semantic segmentation task, DSO-NAS also achieve competitive result compared with manually designed architectures on the PASCAL VOC dataset. Code is available at https://github.com/XinbangZhang/DSO-NAS.
机译:最近神经结构搜索(NAS)对学术界和工业造成了极大的兴趣。但是,由于其巨大和不连续的搜索空间,它仍然具有挑战性。本文提出了一种直接稀疏优化NAS(DSO-NAS)方法而不是将进化算法或强化学习应用于以前的作品。 DSO-NAS背后的动机是在模型修剪方面解决任务。为了实现这一目标,我们从完全连接的块开始,然后引入缩放因子以缩放操作之间的信息流。接下来,施加稀疏的正常规则在架构中的Preune无用连接。最后,推导出有效和理论上的声音优化方法来解决它。我们的方法享有可分辨率和效率的两种优点,因此它可以直接应用于像想象成的大型数据集和超出分类的任务。特别是,在CIFAR-10数据集上,DSO-NAS实现了平均测试误差2.74%,而在ImageNet DataSet DSO-NAS上,在18小时内以8GPus的8GPus实现25.4%的测试误差。与语义分割任务一样,与Pascal VOC数据集的手动设计架构相比,DSO-NAS也实现了竞争结果。代码可在https://github.com/xinbangzhang/dso-nas获得。

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