A Self-adaptive Neuroevolution Approach to Constructing Deep Neural Network Architectures Across Different Types

Zhenhao Shuai, Hongbo Liu, Zhaolin Wan, Wei-jie Yu, Jinchao Zhang
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Abstract

Neuroevolution has greatly promoted Deep Neural Network (DNN) architecture design and its applications, while there is a lack of methods available across different DNN types concerning both their scale and performance. In this study, we propose a self-adaptive neuroevolution (SANE) approach to automatically construct various lightweight DNN architectures for different tasks. One of the key settings in SANE is the search space defined by cells and organs self-adapted to different DNN types. Based on this search space, a constructive evolution strategy with uniform evolution settings and operations is designed to grow DNN architectures gradually. SANE is able to self-adaptively adjust evolution exploration and exploitation to improve search efficiency. Moreover, a speciation scheme is developed to protect evolution from early convergence by restricting selection competition within species. To evaluate SANE, we carry out neuroevolution experiments to generate different DNN architectures including convolutional neural network, generative adversarial network and long short-term memory. The results illustrate that the obtained DNN architectures could have smaller scale with similar performance compared to existing DNN architectures. Our proposed SANE provides an efficient approach to self-adaptively search DNN architectures across different types.
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构建不同类型深度神经网络架构的自适应神经进化方法
神经进化极大地促进了深度神经网络(Deep Neural Network, DNN)的架构设计及其应用,但缺乏针对不同深度神经网络类型的规模和性能的方法。在这项研究中,我们提出了一种自适应神经进化(SANE)方法来自动构建不同任务的各种轻量级DNN架构。SANE的关键设置之一是由自适应不同DNN类型的细胞和器官定义的搜索空间。在此搜索空间的基础上,设计了具有统一进化设置和操作的建设性进化策略,使深度神经网络架构逐步成长。该算法能够自适应调整进化的探索和开发,以提高搜索效率。此外,还提出了一种物种形成方案,通过限制物种内的选择竞争来保护进化免于早期趋同。为了评估SANE,我们进行了神经进化实验来生成不同的深度神经网络架构,包括卷积神经网络、生成对抗网络和长短期记忆。结果表明,与现有的深度神经网络结构相比,所获得的深度神经网络结构可以具有更小的规模和相似的性能。我们提出的SANE提供了一种有效的方法来自适应搜索不同类型的DNN架构。
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