Several Aspects of Nonparametric Prediction of Nonlinear Time Series

W. Orzeszko
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引用次数: 1

Abstract

Nonparametric regression is an alternative to the parametric approach, which consists of applying parametric models, i.e. models of the certain functional form with a fixed number of parameters. As opposed to the parametric approach, nonparametric models have a general form, which can be approximated increasingly precisely when the sample size grows. Hereby they do not impose such restricted assumptions about the form of the modelling dependencies and in consequence, they are more flexible and let the data speak for themselves. That is why they are a promising tool for forecasting, especially in case of nonlinear time series. One of the most popular nonparametric regression method is the Nadaraya- Watson kernel smoothing. Nowadays, there are a number of variations of this method, like the local-linear kernel estimator, which combines the local linear approximation and the kernel estimator. In the paper a Monte Carlo study is conducted in order to assess the usefulness of the kernel smoothers to nonlinear time series forecasting and to compare them with the other techniques of forecasting.
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非线性时间序列非参数预测的几个方面
非参数回归是参数方法的另一种选择,它包括应用参数模型,即具有固定数量参数的特定函数形式的模型。与参数方法相反,非参数模型具有一般形式,当样本量增加时,它可以越来越精确地逼近。因此,它们不会对建模依赖关系的形式施加这种受限的假设,因此,它们更加灵活,让数据自己说话。这就是为什么它们是一个很有前途的预测工具,特别是在非线性时间序列的情况下。其中最流行的非参数回归方法是Nadaraya- Watson核平滑。目前,这种方法有许多变体,如局部线性核估计,它结合了局部线性近似和核估计。本文通过蒙特卡罗方法研究了核平滑对非线性时间序列预测的有效性,并将其与其他预测技术进行了比较。
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