Parametric and non-parametric modelling of time series - An empirical study

被引:0
作者
Chen, GM
Abraham, B
Bennett, GW
机构
关键词
environmental study; prediction; ARIMA models; non-parametric regression;
D O I
10.1002/(SICI)1099-095X(199701)8:1<63::AID-ENV238>3.3.CO;2-2
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
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.
引用
收藏
页码:63 / 74
页数:12
相关论文
共 50 条
[21]   Outlier detection in non-parametric profile monitoring [J].
Wang, Tao ;
Wang, Yunlong ;
Zang, Qingpei .
STATISTICS, 2022, 56 (04) :805-822
[22]   On the Validity of the Bootstrap in Non-Parametric Functional Regression [J].
Ferraty, Frederic ;
Van Keilegom, Ingrid ;
Vieu, Philippe .
SCANDINAVIAN JOURNAL OF STATISTICS, 2010, 37 (02) :286-306
[23]   Non-parametric Bayesian inference on bivariate extremes [J].
Guillotte, Simon ;
Perron, Francois ;
Segers, Johan .
JOURNAL OF THE ROYAL STATISTICAL SOCIETY SERIES B-STATISTICAL METHODOLOGY, 2011, 73 :377-406
[24]   Test for Linearity in Non-Parametric Regression Models [J].
Khedidja, Djaballah-Djeddour ;
Moussa, Tazerouti .
AUSTRIAN JOURNAL OF STATISTICS, 2022, 51 (01) :16-34
[25]   Robust Non-Parametric Mortality and Fertility Modelling and Forecasting: Gaussian Process Regression Approaches [J].
Lam, Ka Kin ;
Wang, Bo .
FORECASTING, 2021, 3 (01) :207-227
[26]   Non-parametric estimates of the first hitting time of Li-ion battery [J].
Hasilova, Kamila ;
Valis, David .
MEASUREMENT, 2018, 113 :82-91
[27]   Non-parametric regression for space-time forecasting under missing data [J].
Haworth, James ;
Cheng, Tao .
COMPUTERS ENVIRONMENT AND URBAN SYSTEMS, 2012, 36 (06) :538-550
[28]   Comparison of parametric and non-parametric estimations of the annual date of positive water temperature onset [J].
Daigle, Anik ;
Ouarda, Taha B. M. J. ;
Bilodeau, Laurent .
JOURNAL OF HYDROLOGY, 2010, 390 (1-2) :75-84
[29]   Predicting fertility from seminal traits: Performance of several parametric and non-parametric procedures [J].
Piles, M. ;
Diez, J. ;
del Coz, J. J. ;
Montanes, E. ;
Quevedo, J. R. ;
Ramon, J. ;
Rafel, O. ;
Lopez-Bejar, M. ;
Tusell, L. .
LIVESTOCK SCIENCE, 2013, 155 (01) :137-147
[30]   Modeling radar-rainfall estimation uncertainties using parametric and non-parametric approaches [J].
Villarini, Gabriele ;
Serinaldi, Francesco ;
Krajewski, Witold F. .
ADVANCES IN WATER RESOURCES, 2008, 31 (12) :1674-1686