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Properties of Direct Multi-Step Ahead Prediction of Chaotic Time Series and Out-of-Bag Estimate for Model Selection

机译:混沌时间序列的直接多步提前预测和模型选择的袋外估计属性

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This paper examines properties of direct multi-step ahead (DMS) prediction of chaotic time series and out-of-bag (OOB) estimate of the prediction performance for model selection. Although previous studies of DMS estimation suggest that the DMS technique allows us accuracy improvements from iterated one-step ahead (IOS) prediction. However, it has not considered chaotic time series which has long-term unpredictability as well as short-term predictability, where the boundary of the horizon of long-term and short-term is not known previously. As a result of the model selection, the CAN2 with a large number of units are selected, which is supposed to be useful for avoiding unpredictable data of chaotic time series. We examine the relationship between the OOB prediction and the prediction for the test data, and we suggest that there is a mixed distribution of very small and very big magnitude of prediction errros owing to chaotic time series. We show the effectiveness and the properties of the present method by means of numerical experiments.
机译:本文研究了混沌时间序列的直接多步提前(DMS)预测和模型选择的预测性能的袋外(OOB)估计的属性。尽管以前的DMS估计研究表明,DMS技术可以使我们从迭代的一步式(IOS)预测中提高准确性。但是,它没有考虑具有长期不可预测性和短期可预测性的混沌时间序列,而长期和短期的视界边界以前是未知的。作为模型选择的结果,选择了具有大量单元的CAN2,这被认为有助于避免混乱的时间序列的不可预测的数据。我们检查了OOB预测与测试数据预测之间的关系,并建议由于时间序列混乱,存在非常小的和非常大的预测误差混合分布。我们通过数值实验证明了本方法的有效性和性质。

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