The traditional Neural Network-development process requires substantial expert knowledge and relies heavily on intuition and trial-and-error. Neural Architecture Search (NAS) frameworks were introduced to robustly search for network topologies, as well as facilitate the automated development of Neural Networks. While some optimization approaches -- such as Genetic Algorithms -- have been extensively explored in the NAS context, other Metaheuristic Optimization algorithms have not yet been evaluated. In this paper, we propose HiveNAS, the first Artificial Bee Colony-based NAS framework.
翻译:传统的神经网络发展进程需要大量专家知识,并严重依赖直觉和试镜和试镜。引入了神经结构搜索框架以大力搜索网络地形,并促进神经网络的自动发展。虽然在神经网络背景下广泛探索了一些优化方法,如遗传变数法,但其他超光速优化算法尚未得到评估。在本文件中,我们提出了HiveNAS(HiveNAS),即第一个人工蜜蜂殖民地NAS框架。