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Time series study of GGAP-RBF network: predictions of Nasdaq stock and nitrate contamination of drinking water

机译:GGAP-RBF网络的时间序列研究:纳斯达克存量和饮用水中硝酸盐污染的预测

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This paper investigates the performance of the latest developed GGAP-RBF network in time series prediction applications. The growing and pruning strategy of GGAP-RBF are based on linking the required learning accuracy with the significance of the nearest added new neuron. Significance of a neuron is a measure of the average information content of that neuron. GGAP-RBF algorithm may be attractive in real time-series applications due to its good efficiency and simple topology. This paper investigates its performance in two important real time-series applications: predictions of Nasdaq stock and weekly nitrate contamination of drinking water. The simulation results demonstrate that GGAP-RBF network can achieve good prediction accuracy in an efficient and easy way.
机译:本文研究了最新开发的GGAP-RBF网络在时间序列预测应用中的性能。 GGAP-RBF的生长和修剪策略基于将所需的学习准确性与最近添加的新神经元的重要性联系在一起。神经元的重要性是该神经元平均信息含量的量度。 GGAP-RBF算法具有良好的效率和简单的拓扑结构,因此在实时系列应用中可能很有吸引力。本文研究了其在两个重要的实时序列应用中的性能:纳斯达克存量的预测和每周硝酸盐对饮用水的污染。仿真结果表明,GGAP-RBF网络可以高效,简便地实现良好的预测精度。

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