amultiscalemodelingapproachincorporatingarimaandannsforfinancialmarketvolatilityforecasting
Xiao Yi2; Xiao Jin3; Liu John1; Wang Shouyang4
刊名journalofsystemsscienceandcomplexity
2014
卷号27期号:1页码:225
ISSN号1009-6124
英文摘要The financial market volatility forecasting is regarded as a challenging task because of irregularity, high fluctuation, and noise. In this study, a multiscale ensemble forecasting model is proposed. The original financial series are decomposed firstly different scale components (i.e., approximation and details) using the maximum overlap discrete wavelet transform (MODWT). The approximation is predicted by a hybrid forecasting model that combines autoregressive integrated moving average (ARIMA) with feedforward neural network (FNN). ARIMA model is used to generate a linear forecast, and then FNN is developed as a tool for nonlinear pattern recognition to correct the estimation error in ARIMA forecast. Moreover, details are predicted by Elman neural networks. Three weekly exchange rates data are collected to establish and validate the forecasting model. Empirical results demonstrate consistent better performance of the proposed approach.
语种英语
内容类型期刊论文
源URL[http://ir.amss.ac.cn/handle/2S8OKBNM/38266]  
专题系统科学研究所
作者单位1.香港城市大学
2.华中师范大学
3.四川大学
4.中国科学院数学与系统科学研究院
推荐引用方式
GB/T 7714
Xiao Yi,Xiao Jin,Liu John,et al. amultiscalemodelingapproachincorporatingarimaandannsforfinancialmarketvolatilityforecasting[J]. journalofsystemsscienceandcomplexity,2014,27(1):225.
APA Xiao Yi,Xiao Jin,Liu John,&Wang Shouyang.(2014).amultiscalemodelingapproachincorporatingarimaandannsforfinancialmarketvolatilityforecasting.journalofsystemsscienceandcomplexity,27(1),225.
MLA Xiao Yi,et al."amultiscalemodelingapproachincorporatingarimaandannsforfinancialmarketvolatilityforecasting".journalofsystemsscienceandcomplexity 27.1(2014):225.
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