NECVLGJun 9, 2020

Neuroevolution in Deep Neural Networks: Current Trends and Future Challenges

arXiv:2006.05415v1174 citations
Originality Synthesis-oriented
AI Analysis

It addresses the lack of comprehensive surveys in neuroevolution, which could hinder adoption by deep learning researchers and limit performance improvements in real-world applications.

This paper provides a comprehensive survey and evaluation of neuroevolution methods for automating the architectural configuration and training of deep neural networks, highlighting current issues and future research directions.

A variety of methods have been applied to the architectural configuration and learning or training of artificial deep neural networks (DNN). These methods play a crucial role in the success or failure of the DNN for most problems and applications. Evolutionary Algorithms (EAs) are gaining momentum as a computationally feasible method for the automated optimisation and training of DNNs. Neuroevolution is a term which describes these processes of automated configuration and training of DNNs using EAs. While many works exist in the literature, no comprehensive surveys currently exist focusing exclusively on the strengths and limitations of using neuroevolution approaches in DNNs. Prolonged absence of such surveys can lead to a disjointed and fragmented field preventing DNNs researchers potentially adopting neuroevolutionary methods in their own research, resulting in lost opportunities for improving performance and wider application within real-world deep learning problems. This paper presents a comprehensive survey, discussion and evaluation of the state-of-the-art works on using EAs for architectural configuration and training of DNNs. Based on this survey, the paper highlights the most pertinent current issues and challenges in neuroevolution and identifies multiple promising future research directions.

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