A survey on computationally efficient neural architecture search

Shiqing Liu , Haoyu Zhang , Yaochu Jin
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引用次数: 10

Abstract

Neural architecture search (NAS) has become increasingly popular in the deep learning community recently, mainly because it can provide an opportunity to allow interested users without rich expertise to benefit from the success of deep neural networks (DNNs). However, NAS is still laborious and time-consuming because a large number of performance estimations are required during the search process of NAS, and training DNNs is computationally intensive. To solve this major limitation of NAS, improving the computational efficiency is essential in the design of NAS. However, a systematic overview of computationally efficient NAS (CE-NAS) methods still lacks. To fill this gap, we provide a comprehensive survey of the state-of-the-art on CE-NAS by categorizing the existing work into proxy-based and surrogate-assisted NAS methods, together with a thorough discussion of their design principles and a quantitative comparison of their performances and computational complexities. The remaining challenges and open research questions are also discussed, and promising research topics in this emerging field are suggested.

计算效率高的神经结构搜索研究综述
神经架构搜索(NAS)最近在深度学习社区变得越来越流行,主要是因为它可以提供一个机会,让没有丰富专业知识的感兴趣的用户从深度神经网络(dnn)的成功中受益。然而,由于在搜索过程中需要进行大量的性能估计,并且训练dnn的计算量很大,因此NAS仍然是费力且耗时的。为了解决NAS的这一主要限制,提高计算效率是NAS设计的关键。然而,对计算效率高的NAS (CE-NAS)方法的系统概述仍然缺乏。为了填补这一空白,我们对CE-NAS的最新技术进行了全面的调查,将现有的工作分为基于代理的和代理辅助的NAS方法,并对它们的设计原则进行了深入的讨论,并对它们的性能和计算复杂性进行了定量比较。讨论了该领域存在的挑战和有待解决的问题,并提出了该领域的研究方向。
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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