进化神经网络的一种启发式变异算子

Bi-ying Zhang
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引用次数: 1

摘要

权重适应、节点删除和节点添加是进化神经网络(ENN)的三种关键突变操作。突变率的确定和突变类型的选择是进化中的两个重要问题,它们对ENN的性能有着至关重要的影响。为了提高ENN的收敛速度和分类精度,提出了一种同时进化连接权值和网络结构的启发式变异算子(HMO)。在变异算子中引入自适应突变率,并从权值自适应、节点删除和节点添加三个方面启发式地选择变异类型。当种群不进行多代连续进化时,为了跳出局部最优点,扩展搜索空间,会增加突变率,改变突变类型。三个分类问题的实验结果表明,HMO在收敛速度和分类精度方面都优于传统的突变算子(TMO)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Heuristic Mutation Operator for Evolutionary Neural Network
Weight adaptation, node deletion and node addition are three key types of mutation operations for the evolutionary neural network(ENN). The determination of mutation rate and the selection of mutation type are two important issues for evolution, and they have a crucial impact on the performance of ENN. In order to improve the convergence speed and classification accuracy of ENN, a heuristic mutation operator (HMO), which evolves connection weights and network structure simultaneously, was proposed. An adaptive mutation rate is applied in the mutation operator, and the mutation type is selected heuristically from weight adaptation, node deletion and node addition. When the population is not evolved continuously for many generations, in order to jump from the local optima and extend the search space, the mutation rate will be increased and the mutation type will be changed. The experimental results with three classification problems show that the HMO achieves better performance than the traditional mutation operator (TMO) in terms of convergence speed and classification accuracy.
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