Predictive analytics of crude oil prices by utilizing the intelligent model search engine
This paper proposes an intelligent model search engine (IMSE), an integrated model selection algorithm, subject to the out of sample predictive performance and given set of explanatory variables for forecasting crude oil prices. In the conventional applications of energy price forecasting, models ar...
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sg-ntu-dr.10356-1408522020-06-02T08:08:45Z Predictive analytics of crude oil prices by utilizing the intelligent model search engine Bekiroglu, Korkut Duru, Okan Gulay, Emrah Su, Rong Lagoa, Constantino School of Civil and Environmental Engineering School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Predictive Analytics Oil Prices This paper proposes an intelligent model search engine (IMSE), an integrated model selection algorithm, subject to the out of sample predictive performance and given set of explanatory variables for forecasting crude oil prices. In the conventional applications of energy price forecasting, models are selected based on preliminary assumptions on causality and model structure (e.g. lag length in lagged variables). Relaxation of those assumptions would cause over-fitting and reduce the degree of freedom. Considering the ultimate objective of forecasting models, any variations of models may be tested in the out-of-sample period, and the optimization problem can be redefined as minimization of post-sample error metric in a validation set. By this, data mining would be a legitimate operation for economic forecasting, and it also proves required conditions usually tested by diagnostic tests such as Akaike Information Criterion for model quality. IMSE is a multi-input/single output difference equation based approach which allows users to test various models (for given set of explanatory variables) as well as various order of lagged inputs (lag length) without a priori assumption or theoretical basis except defining set of potential inputs. Finally, it selects the best model subject to predictive accuracy in a validation set. Empirical results indicated that the proposed algorithm significantly outperformed a broad range of benchmark methodologies as well as proving that certain assumptions of econometric approach (e.g. statistical significance of explanatory variables) are independent of predictive performance. NRF (Natl Research Foundation, S’pore) 2020-06-02T08:08:45Z 2020-06-02T08:08:45Z 2018 Journal Article Bekiroglu, K., Duru, O., Gulay, E., Su, R., & Lagoa, C. (2018). Predictive analytics of crude oil prices by utilizing the intelligent model search engine. Applied Energy, 228, 2387-2397. doi:10.1016/j.apenergy.2018.07.071 0306-2619 https://hdl.handle.net/10356/140852 10.1016/j.apenergy.2018.07.071 2-s2.0-85050482612 228 2387 2397 en Applied Energy © 2018 Elsevier Ltd. All rights reserved. |
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Engineering::Electrical and electronic engineering Predictive Analytics Oil Prices Bekiroglu, Korkut Duru, Okan Gulay, Emrah Su, Rong Lagoa, Constantino Predictive analytics of crude oil prices by utilizing the intelligent model search engine |
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This paper proposes an intelligent model search engine (IMSE), an integrated model selection algorithm, subject to the out of sample predictive performance and given set of explanatory variables for forecasting crude oil prices. In the conventional applications of energy price forecasting, models are selected based on preliminary assumptions on causality and model structure (e.g. lag length in lagged variables). Relaxation of those assumptions would cause over-fitting and reduce the degree of freedom. Considering the ultimate objective of forecasting models, any variations of models may be tested in the out-of-sample period, and the optimization problem can be redefined as minimization of post-sample error metric in a validation set. By this, data mining would be a legitimate operation for economic forecasting, and it also proves required conditions usually tested by diagnostic tests such as Akaike Information Criterion for model quality. IMSE is a multi-input/single output difference equation based approach which allows users to test various models (for given set of explanatory variables) as well as various order of lagged inputs (lag length) without a priori assumption or theoretical basis except defining set of potential inputs. Finally, it selects the best model subject to predictive accuracy in a validation set. Empirical results indicated that the proposed algorithm significantly outperformed a broad range of benchmark methodologies as well as proving that certain assumptions of econometric approach (e.g. statistical significance of explanatory variables) are independent of predictive performance. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Bekiroglu, Korkut Duru, Okan Gulay, Emrah Su, Rong Lagoa, Constantino |
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Article |
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Bekiroglu, Korkut Duru, Okan Gulay, Emrah Su, Rong Lagoa, Constantino |
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Bekiroglu, Korkut |
title |
Predictive analytics of crude oil prices by utilizing the intelligent model search engine |
title_short |
Predictive analytics of crude oil prices by utilizing the intelligent model search engine |
title_full |
Predictive analytics of crude oil prices by utilizing the intelligent model search engine |
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Predictive analytics of crude oil prices by utilizing the intelligent model search engine |
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Predictive analytics of crude oil prices by utilizing the intelligent model search engine |
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predictive analytics of crude oil prices by utilizing the intelligent model search engine |
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2020 |
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https://hdl.handle.net/10356/140852 |
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1681059689885859840 |