Evolving Neural Networks (NNs) has recently seen an increasing interest as an alternative path that might be more successful. It has many advantages compared to other approaches, such as learning the architecture of the NNs. However, the extremely large search space and the existence of many complex interacting parts still represent a major obstacle. Many criteria were recently investigated to help guide the algorithm and to cut down the large search space. Recently there has been growing research bringing insights from network science to improve the design of NNs. In this paper, we investigate evolving NNs architectures that have one of the most fundamental characteristics of real-world networks, namely the optimal balance between connections cost and information flow. The performance of different metrics that represent this balance is evaluated and the improvement in the accuracy of putting more selection pressure toward this balance is demonstrated on three datasets.
翻译:不断演变的神经网络(NNs)最近看到,人们越来越感兴趣,认为它是一种可能比较成功的替代途径,与其他方法相比,它有许多好处,例如学习NNs的结构。然而,极其庞大的搜索空间和许多复杂的互动部分的存在仍是一个重大障碍。最近对许多标准进行了调查,以帮助指导算法和缩小大型搜索空间。最近,越来越多的研究从网络科学中引入了洞察力,以改进NNs的设计。在本文中,我们研究了不断演变的NNS结构,这些结构具有现实世界网络的最基本特征之一,即连接成本与信息流动之间的最佳平衡。评估了代表这一平衡的不同指标的性能,并在三个数据集中展示了为这一平衡增加选择压力的准确性。