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Smoothing Techniques for Prediction of Non-Linear Time Series

机译:用于预测非线性时间序列的平滑技术

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We address the problem of non-linear modelling of time series and give a brief introduction to the method of state space reconstruction - embedding one-dimensional data into a higher-dimensional space. This method is based on the fundamental result in the area of chaotic time series, the Takens reconstruction theorem. Then we consider, among other non-linear methods of prediction, the kernel estimation of autoregression, and introduce a variation of this method. We apply it to an experimental time series and compare its performance with predictions by feed-forward neural networks as well as with fitting a local and a golbal linear autoregression.
机译:我们解决了时间序列非线性建模问题,并简要介绍了国家空间重建方法 - 将一维数据嵌入到高维空间中。该方法基于混沌时间序列区域的基础结果,Takens重建定理。然后我们考虑其他非线性预测方法,自回归的内核估计,并引入这种方法的变化。我们将其应用于实验时间序列,并通过前馈神经网络的预测进行比较其性能以及适用于本地和古代古代的线性自动增加。

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