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New Parameter-Free Simplified Swarm Optimization for Artificial Neural Network Training and its Application in the Prediction of Time Series

机译:人工神经网络训练的新无参数化简化群算法及其在时间序列预测中的应用

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摘要

A new soft computing method called the parameter-free simplified swarm optimization (SSO)-based artificial neural network (ANN), or improved SSO for short, is proposed to adjust the weights in ANNs. The method is a modification of the SSO, and seeks to overcome some of the drawbacks of SSO. In the experiments, the iSSO is compared with five other famous soft computing methods, including the backpropagation algorithm, the genetic algorithm, the particle swarm optimization (PSO) algorithm, cooperative random learning PSO, and the SSO, and its performance is tested on five famous time-series benchmark data to adjust the weights of two ANN models (multilayer perceptron and single multiplicative neuron model). The experimental results demonstrate that iSSO is robust and more efficient than the other five algorithms.
机译:提出了一种新的软计算方法,称为基于无参数的简化群优化算法(SSO)的人工神经网络(ANN),简称为改进的SSO,用于调整ANN的权重。该方法是对SSO的修改,旨在克服SSO的某些缺点。在实验中,将iSSO与其他五种著名的软计算方法(包括反向传播算法,遗传算法,粒子群优化(PSO)算法,协作随机学习PSO和SSO)进行了比较,并在五种软件上测试了其性能著名的时间基准数据来调整两个ANN模型(多层感知器和单倍增神经元模型)的权重。实验结果表明,iSSO比其他五种算法更强大,效率更高。

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