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Optimization of Neuro-Coefficient Smooth Transition Autoregressive Models Using Differential Evolution

机译:使用微分进化的神经系数平滑过渡自回归模型的优化

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This paper presents a procedure for parameter estimation of the neuro-coefficient smooth transition autoregressive model, substituting the combination of grid search and local search of the original proposal of Medeiros and Veiga (2005, IEEE Trans. NN, 16(1):97-113) with a differential evolution scheme. The purpose of this novel fitting procedure is to obtain more accurate models under preservation of the most important model characteristics. These are, firstly, that the models are built using an iterative approach based on statistical tests, and therewith have a mathematically sound construction procedure. And secondly, that the models are interpretable in terms of fuzzy rules. The proposed procedure has been tested empirically by applying it to different real-world time series. The results indicate that, in terms of accuracy, significantly improved models can be achieved, so that accuracy of the resulting models is comparable to other standard time series forecasting methods.
机译:本文提出了一种用于神经系数平滑过渡自回归模型的参数估计的程序,它代替了Medeiros和Veiga(2005,IEEE Trans。NN,16(1):97- 113)。这种新颖的拟合过程的目的是在保留最重要的模型特征的情况下获得更准确的模型。首先,这些模型是使用基于统计测试的迭代方法构建的,并且具有数学上合理的构建过程。其次,这些模型可以用模糊规则来解释。通过将其应用于不同的现实世界时间序列,对所提出的过程进行了经验测试。结果表明,就准确性而言,可以实现显着改进的模型,因此所得模型的准确性可与其他标准时间序列预测方法相媲美。

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