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Noisy Time Series Prediction Using M-estimator Based Robust Radial Basis Function Neural Networks With Growing And Pruning Techniques

机译:使用基于M估计器的鲁棒径向基函数神经网络的增长和修剪技术对噪声时间序列进行预测

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摘要

Noisy time series prediction is attractive and challenging since it is essential in many fields, such as forecasting, modeling, signal processing, economic and business planning. Radial basis function (RBF) neural network is considered as a good candidate for the prediction problems due to its rapid learning capacity and, therefore, has been applied successfully to nonlinear time series modeling and forecasts. However, the traditional RBF network encounters two primary problems. The first one is that the network performance is very likely to be affected by noise. The second problem is about the determination of the number of hidden nodes. In this paper, we present an M-estimator based robust radial basis function (RBF) learning algorithm with growing and pruning techniques. The Welsch M-estimator and median scale estimator are employed to get rid of the influence from the noise. The concept of neuron significance is adopted to implement the growing and pruning techniques of network nodes. The proposed method not only eliminates the influence of noise, but also dynamically adjusts the number of neurons to approach an appropriate size of the network. The results from the experiments show that the proposed method can produce a minimum prediction error compared with other methods. Furthermore, even adding 30% additive noise of the magnitude of the data, this proposed method still can do a good performance.
机译:嘈杂的时间序列预测是有吸引力且具有挑战性的,因为它在许多领域都至关重要,例如预测,建模,信号处理,经济和业务计划。径向基函数(RBF)神经网络因其快速的学习能力而被认为是预测问题的良好候选者,因此已成功应用于非线性时间序列建模和预测。但是,传统的RBF网络遇到两个主要问题。第一个是网络性能很可能会受到噪声的影响。第二个问题是确定隐藏节点的数量。在本文中,我们提出了一种具有增长和修剪技术的基于M估计的鲁棒径向基函数(RBF)学习算法。使用Welsch M估计器和中位数估计器来消除噪声的影响。采用神经元重要性的概念来实现网络节点的增长和修剪技术。所提出的方法不仅消除了噪声的影响,而且还动态地调整了神经元的数量以接近网络的适当大小。实验结果表明,与其他方法相比,该方法可以产生最小的预测误差。此外,即使添加了数据量的30%的附加噪声,该建议方法仍然可以实现良好的性能。

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