A New Harris Hawk Whale Optimization Algorithm for Enhancing Neural Networks

Parul Agarwal, Naima Farooqi, Aditya Gupta, S. Mehta, Saransh Khandelwal
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引用次数: 1

Abstract

The learning process of artificial neural-networks is considered as one of the burdensome challenges to the researchers. The major dilemma of training the neural networks is the nonlinear nature and unknown controlling parameters like weights and biases. Slow convergence and trap in local optima are demerits of training neural network algorithms. To overcome these demerits, this work proposes a hybrid of Harris hawk optimization with a whale optimization algorithm to train the neural network. Harris hawk is a metaheuristic evolutionary algorithm and is used here to optimize the weights and bias of neural networks. The efficacy of the proposed algorithm is assessed by evaluating it on different kinds of cancer datasets and other datasets like fraud, banking note authentication. The experimental results demonstrate that the proposed algorithm performs better than its contemporary counterparts.
一种新的增强神经网络的哈里斯鹰鲸优化算法
人工神经网络的学习过程一直是困扰研究人员的难题之一。训练神经网络的主要难题是非线性和未知的控制参数,如权值和偏差。训练神经网络算法的缺点是收敛速度慢和陷入局部最优。为了克服这些缺点,本研究提出了一种混合哈里斯鹰优化和鲸鱼优化算法来训练神经网络。Harris hawk是一种元启发式进化算法,用于优化神经网络的权重和偏差。通过在不同类型的癌症数据集和其他数据集(如欺诈、银行票据认证)上对所提出算法的有效性进行评估。实验结果表明,该算法的性能优于现有算法。
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