Iterative Structure-Based Genetic Programming for Neural Architecture Search

Rahul Kapoor, N. Pillay
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Abstract

In this paper we present an iterative structure-based genetic programming algorithm for neural architecture search. Canonical genetic programming uses a fitness function to determine where to move the search to in the program space. This research investigates using the structure of the syntax trees, representing different areas of the program space, in addition to the fitness function to direct the search. The structure is used to avoid areas of the search that previously led to local optima both globally (exploration) and locally (exploitation). The proposed approach is evaluated for image classification and video shorts creation. The iterative structure-based approach was found to produce better results then canonical genetic programming for both problem domains, with a slight reduction in computational cost. The approach also produced better results than genetic algorithms which are traditionally used for neural architecture search.
基于迭代结构的神经结构搜索遗传规划
本文提出了一种基于迭代结构的神经结构搜索遗传规划算法。规范遗传规划使用适应度函数来确定在程序空间中将搜索移动到哪里。本研究探讨了使用语法树的结构,表示程序空间的不同区域,除了适应度函数来指导搜索。该结构用于避免先前导致全局(探索)和局部(开发)局部最优的搜索区域。在图像分类和视频短片制作方面对该方法进行了评价。在这两个问题域中,基于迭代结构的方法都比正则遗传规划产生更好的结果,并且计算成本略有降低。该方法也比传统的用于神经结构搜索的遗传算法产生了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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