论文标题
进化神经建筑搜索的调查
A Survey on Evolutionary Neural Architecture Search
论文作者
论文摘要
深度神经网络(DNN)在许多应用中取得了巨大的成功。 DNNS的体系结构在其性能中起着至关重要的作用,通常手动设计具有丰富的专业知识。但是,由于反复试验的过程,这种设计过程是劳动力密集的,而且由于实践中罕见的专业知识,也不容易实现。神经体系结构搜索(NAS)是一种可以自动设计架构的技术。在实现NAS的不同方法中,进化计算(EC)方法最近引起了很多关注和成功。不幸的是,尚未对基于EC的NAS算法进行全面摘要。本文根据核心组成部分回顾了最新的基于EC的NAS方法的200多篇论文,以系统地讨论其设计原理以及有关设计的理由。此外,还讨论了当前的挑战和问题,以确定这个新兴领域的未来研究。
Deep Neural Networks (DNNs) have achieved great success in many applications. The architectures of DNNs play a crucial role in their performance, which is usually manually designed with rich expertise. However, such a design process is labour intensive because of the trial-and-error process, and also not easy to realize due to the rare expertise in practice. Neural Architecture Search (NAS) is a type of technology that can design the architectures automatically. Among different methods to realize NAS, Evolutionary Computation (EC) methods have recently gained much attention and success. Unfortunately, there has not yet been a comprehensive summary of the EC-based NAS algorithms. This paper reviews over 200 papers of most recent EC-based NAS methods in light of the core components, to systematically discuss their design principles as well as justifications on the design. Furthermore, current challenges and issues are also discussed to identify future research in this emerging field.