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首页> 外文期刊>Moscow University Computational Mathematics and Cybernetics >Combining Endogenous and Exogenous Variables in a Special Case of Non-Parametric Time Series Forecasting Model
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Combining Endogenous and Exogenous Variables in a Special Case of Non-Parametric Time Series Forecasting Model

机译:在非参数时间序列预测模型的特殊情况下结合内生和外生变量

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摘要

We address a problem of increasing quality of forecasting time series by taking into account the information about exogenous time series. We aim to improve a non-parametric forecasting algorithm that minimizes the convolution of a histogram of time series with the loss function. We propose to adjust the histogram, using mixtures of conditional histograms as a less sparse alternative to multidimensional histogram and in some cases demonstrate the decrease of loss compared to the basic forecasting algorithm. To the extent of our knowledge, such approach to combining endogenous and exogenous time series is original and has not been proposed yet. The suggested method is illustrated with the data from the Russian Railways.
机译:通过考虑有关外生时间序列的信息,我们解决了提高预测时间序列质量的问题。我们旨在改进一种非参数预测算法,以最大程度地减少时间序列直方图与损失函数的卷积。我们建议使用条件直方图的混合来调整直方图,以作为多维直方图的稀疏替代方案,并且在某些情况下,与基本预测算法相比,可以减少损失。据我们所知,这种将内源和外源时间序列相结合的方法是原创的,尚未提出。俄罗斯铁路公司的数据说明了建议的方法。

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