Improving One-Shot NAS with Shrinking-and-Expanding Supernet
Hu YM(胡一鸣)
刊名Pattern Recognition
2021-05-24
卷号118期号:0页码:0
关键词Neural architecture search supernet Search space shrinking
文献子类SCI
英文摘要

Training a supernet using a copy of shared weights has become a popular approach to speed up neural ar- chitecture search (NAS). However, it is difficult for supernet to accurately evaluate on a large-scale search space due to high weight coupling in weight-sharing setting. To address this, we present a shrinking- and-expanding supernet that decouples the shared parameters by reducing the degree of weight shar- ing, avoiding unstable and inaccurate performance estimation as in previous methods. Specifically, we propose a new shrinking strategy that progressively simplifies the original search space by discarding unpromising operators in a smart way. Based on this, we further present an expanding strategy by ap- propriately increasing parameters of the shrunk supernet. We provide comprehensive evidences showing that, in weight-sharing supernet, the proposed method SE-NAS brings more accurate and more stable performance estimation. Experimental results on ImageNet dataset indicate that SE-NAS achieves higher Top-1 accuracy than its counterparts under the same complexity constraint and search space. The abla- tion study is presented to further understand SE-NAS. 

语种英语
内容类型期刊论文
源URL[http://ir.ia.ac.cn/handle/173211/44836]  
专题精密感知与控制研究中心_精密感知与控制
作者单位1.Institute of Automation, Chinese Academy of Sciences
2.School of Artificial Intelligence, University of Chinese Academy of Sciences
推荐引用方式
GB/T 7714
Hu YM. Improving One-Shot NAS with Shrinking-and-Expanding Supernet[J]. Pattern Recognition,2021,118(0):0.
APA Hu YM.(2021).Improving One-Shot NAS with Shrinking-and-Expanding Supernet.Pattern Recognition,118(0),0.
MLA Hu YM."Improving One-Shot NAS with Shrinking-and-Expanding Supernet".Pattern Recognition 118.0(2021):0.
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