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Nonparametric Forecasting in Time Series—A Comparative Study

机译:时间序列中的非参数预测—比较研究

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摘要

The problem of predicting a future value of a time series is considered in this article. If the series follows a stationary Markov process, this can be done by nonparametric estimation of the autoregression function. Two forecasting algorithms are introduced. They only differ in the nonparametric kernel-type estimator used: the Nadaraya-Watson estimator and the local linear estimator. There are three major issues in the implementation of these algorithms: selection of the autoregressor variables, smoothing parameter selection, and computing prediction intervals. These have been tackled using recent techniques borrowed from the nonparametric regression estimation literature under dependence. The performance of these nonparametric algorithms has been studied by applying them to a collection of 43 well-known time series. Their results have been compared to those obtained using classical Box-Jenkins methods. Finally, the practical behavior of the methods is also illustrated by a detailed analysis of two data sets.
机译:本文考虑了预测时间序列的未来值的问题。如果该序列遵循平稳​​的马尔可夫过程,则可以通过自回归函数的非参数估计来完成。介绍了两种预测算法。它们的区别仅在于所使用的非参数核类型估计器:Nadaraya-Watson估计器和局部线性估计器。这些算法的实现存在三个主要问题:自回归变量的选择,平滑参数的选择以及计算预测间隔。这些已经使用依赖于非参数回归估计文献的最新技术来解决。通过将非参数算法应用于43个众所周知的时间序列的集合,已经研究了它们的性能。他们的结果已经与使用经典Box-Jenkins方法获得的结果进行了比较。最后,还通过对两个数据集的详细分析说明了该方法的实际行为。

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