Exploiting resampling techniques for model selection in forecasting: an empirical evaluation using out-of-sample tests

被引:0
作者
Dimitrios Sarris
Evangelos Spiliotis
Vassilios Assimakopoulos
机构
[1] National Technical University of Athens,Forecasting and Strategy Unit, School of Electrical and Computer Engineering
来源
Operational Research | 2020年 / 20卷
关键词
Forecasting; Model selection; Bootstrapping; Resampling; Out-of-sample tests;
D O I
暂无
中图分类号
学科分类号
摘要
Model selection is a complex task widely examined in the literature due to the major gains in forecasting accuracy when performed successfully. To do so, many approaches have been proposed exploiting the available historical data in different ways. In-sample testing is the most common approach but is highly affected by the data and parameter estimation uncertainty. Out-of-sample tests, which use part of the data to evaluate the performance of the forecasting methods, are also well-known alternatives which usually lead to improvements. However, these are still vulnerable to data uncertainty such as noise and outliers. On the other hand, resampling techniques can be used to produce multiple clones of a time series with the same characteristics but a different component of randomness. In this paper, a model selection technique is proposed which takes advantage of the bootstrapping process to mitigate the effect of noise in the original data and then applies out-of-sample tests to the generated series to evaluate the forecasting performance of different methods. The approach is assessed across a large dataset of diverse time series and benchmarked versus other traditional approaches leading to promising results.
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页码:701 / 721
页数:20
相关论文
共 58 条
[1]  
Akaike H(1970)Statistical predictor identification Ann Inst Stat Math 21 243-247
[2]  
Akaike H(1974)A new look at the statistical model identification IEEE Trans Autom Control 19 716-723
[3]  
Assimakopoulos V(2000)The theta model: a decomposition approach to forecasting Int J Forecast 16 521-530
[4]  
Nikolopoulos K(2014)New technology product demand forecasting using a fuzzy inference system Oper Res Int J 14 225-236
[5]  
Atsalakis G(2004)Bootstrap methods for developing predictive models Am Stat 58 131-137
[6]  
Austin PC(2016)Bagging exponential smoothing methods using STL decomposition and Box–Cox transformation Int J Forecast 32 303-312
[7]  
Tu JV(2015)Forecasting house prices in the 50 states using dynamic model averaging and dynamic model selection Int J Forecast 31 63-78
[8]  
Bergmeir C(1964)An analysis of transformations J R Stat Soc B 26 211-252
[9]  
Hyndman RJ(1997)Sieve bootstrap for time series Bernoulli 3 123-148
[10]  
Benitez J(2016)The forecast combination puzzle: a simple theoretical explanation Int J Forecast 32 754-762