مشخصات مقاله | |
عنوان مقاله | An ICA-based support vector regression scheme for forecasting crude oil prices |
ترجمه عنوان مقاله | یک رگرسیون بردار پشتیبانی ICA برای پیش بینی قیمت های نفت خام |
فرمت مقاله | |
نوع مقاله | ISI |
سال انتشار | |
تعداد صفحات مقاله | 9 صفحه |
رشته های مرتبط | مهندسی نفت |
گرایش های مرتبط | نفت خام |
مجله | پیش بینی فنی و تغییر اجتماعی – Technological Forecasting & Social Change |
دانشگاه | دانشکده بازرگانی، دانشگاه هوهی، چین |
کلمات کلیدی | قیمت نفت خام، پیش بینی، تجزیه و تحلیل جزء مستقل، رگرسیون بردار پشتیبانی |
کد محصول | E4684 |
نشریه | نشریه الزویر |
لینک مقاله در سایت مرجع | لینک این مقاله در سایت الزویر (ساینس دایرکت) Sciencedirect – Elsevier |
وضعیت ترجمه مقاله | ترجمه آماده این مقاله موجود نمیباشد. میتوانید از طریق دکمه پایین سفارش دهید. |
دانلود رایگان مقاله | دانلود رایگان مقاله انگلیسی |
سفارش ترجمه این مقاله | سفارش ترجمه این مقاله |
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1. Introduction
Crude oil is one of the most actively traded commodities in the world (Alvarez-Ramirez et al., 2012). The large fluctuations of crude oil prices affect the economic growth of importing and exporting countries as well as regional security and stability (Wu and Zhang, 2014). Recent decades have seen the more frequent fluctuation of crude oil prices, which attracted the concern from both market participants and governmental regulators (Zhang, 2013). Undoubtedly, accurate oil price forecasting is of strategic significance in multiple aspects such as determining the timing for crude oil importing and ensuring economic security (Zhang and Wang, 2013). The intrinsic complex features of oil prices and the uncertainty in economic policy pose big challenge on the accurate forecasting of crude oil prices (Bekirosa et al., 2015). Many scholars have thus contributed to develop novel methods and models for improving the accuracy of crude oil price forecasting. Fan and Li (2015) provided a relatively comprehensive review of major crude oil price forecasting models and found that artificial intelligence models (e.g. neural networks and support vector machines) had received increased attention. Recent methodological developments of artificial intelligence-based forecasting models can be found in Zhu and Wei (2013), Yu et al. (2014), Azadeh et al. (2012; 2015), Barunik and Krehlik (2016), Chen and Chen (2016), Mostafa and El-Masry (2016), and Oztekin et al. (2016). In crude oil price forecasting, Jammazi and Aloui (2012) combined wavelet decomposition and artificial neural network to achieve better forecasting performance. He et al. (2012) showed the effectiveness of a wavelet decomposed ensemble model. Tang and Zhang (2012) developed a multiple wavelet recurrent neural network simulation model to analyze crude oil prices. Guo et al. (2012) proposed an improved support vector machine (SVM) model by using genetic algorithm to optimize the parameters. Zhang et al. (2015) proposed a hybrid method by combining SVM with ensemble empirical mode decomposition and particle swarm optimization models to improve the forecasting performance. Wang et al. (2016) recently proposed a Markov switching multifractal volatility model to forecast crude oil return volatility. |