基于元启发式的神经网络权值和活动节点同步优化

Varun Ojha, A. Abraham, V. Snás̃el
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引用次数: 9

摘要

神经网络活动节点的传递函数对网络的优化有很大的影响。已经观察到,激活节点的均匀性并不能提供最佳解决方案。因此,使用可定制的传递函数,其底层参数经过优化,为神经网络提供异构性。为了实验目的,使用了连接权和传递函数参数的组合基因型表示的元启发式框架。分析了自适应Logistic函数、正切双曲函数、高斯函数和Beta函数的性能。简要比较了不同传递函数和不同神经网络优化算法之间的关系。综合分析基准数据集的结果表明,具有自适应传递函数的人工蜂群在分类精度方面优于粒子群优化算法和差分进化算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simultaneous optimization of neural network weights and active nodes using metaheuristics
Optimization of neural network (NN) is significantly influenced by the transfer function used in its active nodes. It has been observed that the homogeneity in the activation nodes does not provide the best solution. Therefore, the customizable transfer functions whose underlying parameters are subjected to optimization were used to provide heterogeneity to NN. For experimental purposes, a meta-heuristic framework using a combined genotype representation of connection weights and transfer function parameter was used. The performance of adaptive Logistic, Tangent-hyperbolic, Gaussian and Beta functions were analyzed. Concise comparisons between different transfer function and between the NN optimization algorithms are presented. The comprehensive analysis of the results obtained over the benchmark dataset suggests that the Artificial Bee Colony with adaptive transfer function provides the best results in terms of classification accuracy over the particle swarm optimization and differential evolution algorithms.
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