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首页> 外文期刊>Environmetrics >PARAMETRIC AND NON-PARAMETRIC MODELLING OF TIME SERIES — AN EMPIRICAL STUDY
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PARAMETRIC AND NON-PARAMETRIC MODELLING OF TIME SERIES — AN EMPIRICAL STUDY

机译:时间序列的参数和非参数建模—实证研究

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摘要

Time series modelling methods can be loosely classified as (i) parametric methods and (ii) non-parametric methods. Within a usually quite flexible but well structured family of models, the parametric modelling process typically consists of model identification, parameter estimation, model diagnostic checking, and forecasting. On the other hand, within a much less structured framework, different non-parametric smoothing techniques are usually used to bring out the features of the observed time series, however, few serious and systematic attempts have been made to model time series non-parametrically. We concentrate on a non-parametric method based on multivariate adaptive regression splines (MARS). Parallel to the parametric modelling process, we systemize a non-parametric modelling process as (i) model perception (where a very large spline expansion of a very large family of models is specified), (ii) model search (forward plus backward search to come up with a model), (iii) model diagnostic checking, and (iv) forecasting. The major difference between the MARS and the parametric methods is that the potential models for the MARS method form a family which is much larger than any family of parametric time series models, and the local structures found in the data are used to guide the search for a fitted model. Also, unlike most non-parametric methods, MARS time series models can be analytically written down. In this paper, we present the results of an empirical comparison of parametric (ARIMA) and non-parametric (MARS) time series modelling methods. Eight environmental time series are used for the comparison. © 1997 by John Wiley & Sons Ltd.
机译:时间序列建模方法可以大致分为(i)参数方法和(ii)非参数方法。在通常非常灵活但结构良好的一系列模型中,参数化建模过程通常包括模型识别,参数估计,模型诊断检查和预测。另一方面,在结构化程度较低的框架内,通常使用不同的非参数平滑技术来展现观察到的时间序列的特征,但是,很少有人进行认真而系统的尝试来非参数地建模时间序列。我们专注于基于多元自适应回归样条(MARS)的非参数方法。与参数化建模过程并行,我们将非参数化建模过程系统化为(i)模型感知(其中指定了非常大的模型族的非常大的样条展开),(ii)模型搜索(向前加向后搜索到(iii)进行模型诊断检查和(iv)预测。 MARS和参数方法之间的主要区别在于,MARS方法的潜在模型形成的族比任何参数时间序列模型族都大得多,并且使用数据中的局部结构来指导搜索拟合模型。而且,与大多数非参数方法不同,可以解析地记录MARS时间序列模型。在本文中,我们介绍了参数(ARIMA)和非参数(MARS)时间序列建模方法的经验比较结果。比较使用了八个环境时间序列。 ©1997,John Wiley&SonsLtd。

著录项

  • 来源
    《Environmetrics》 |1997年第1期|63-74|共12页
  • 作者单位

    Department of Statistics and Actuarial Science University of Waterloo Waterloo Ontario N2L 3G1 Canada;

    Department of Statistics and Actuarial Science University of Waterloo Waterloo Ontario N2L 3G1 Canada;

    Department of Statistics and Actuarial Science University of Waterloo Waterloo Ontario N2L 3G1 Canada;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    environmental study; prediction; ARIMA models; non-parametric regression;

    机译:环境研究;预测;ARIMA模型;非参数回归;

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