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An Evolutionary Deep Learning Approach Using Genetic Programming with Convolution Operators for Image Classification

机译:基于遗传编程和卷积算子的进化深度学习方法

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Evolutionary deep learning (EDL) as a hot topic in recent years aims at using evolutionary computation (EC) techniques to address existing issues in deep learning. Most existing work focuses on employing EC methods for evolving hyper-parameters, deep structures or weights for neural networks (NNs). Genetic programming (GP) as an EC method is able to achieve deep learning due to the characteristics of its representation. However, many current GP-based EDL methods are limited to binary image classification. This paper proposed a new GP-based EDL method with convolution operators (COGP) for feature learning on binary and multi-class image classification. A novel flexible program structure is developed to allow COGP to evolve solutions with deep or shallow structures. Associated with the program structure, a new function set and a new terminal set are developed in COGP. The experimental results on six different image classification data sets of varying difficulty demonstrated that COGP achieved significantly better performance in most comparisons with 11 effectively competitive methods. The visualisation of the best program further revealed the high interpretability of the solutions found by COGP.
机译:进化的深度学习(EDL)作为近年来的热门话题旨在使用进化计算(EC)技术来解决深度学习中存在的问题。大多数现有工作侧重于采用EC方法,以便不断发展神经网络(NNS)的超参数,深层结构或权重。遗传编程(GP)作为EC方法由于其代表的特征而能够实现深度学习。然而,许多基于GP的EDL方法限于二进制图像分类。本文提出了一种新的基于GP的EDL方法,具有卷积运算符(COGP),用于对二进制和多级图像分类进行特征学习。开发了一种新颖的灵活程序结构,以允许COGP通过深层或浅层的结构演变解决方案。与程序结构相关联,在COGP中开发了一个新功能集和新终端集。对六种不同的图像分类数据集不同难度的实验结果表明,Cogp在大多数有效竞争方法中实现了大多数比较方面的性能明显更好。最佳程序的可视化进一步揭示了Cogp发现的溶液的高可解释性。

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