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A KELM-Based Ensemble Learning Approach for Exchange Rate Forecasting 被引量:1
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作者 Yunjie WEI Shaolong SUN +1 位作者 Kin Keung LAI Ghulam ABBAS 《Journal of Systems Science and Information》 CSCD 2018年第4期289-301,共13页
In this paper, a KELM-based ensemble learning approach, integrating Granger causality test, grey relational analysis and KELM(Kernel Extreme Learning Machine), is proposed for the exchange rate forecasting. The study ... In this paper, a KELM-based ensemble learning approach, integrating Granger causality test, grey relational analysis and KELM(Kernel Extreme Learning Machine), is proposed for the exchange rate forecasting. The study uses a set of sixteen macroeconomic variables including, import,export, foreign exchange reserves, etc. Furthermore, the selected variables are ranked and then three of them, which have the highest degrees of relevance with the exchange rate, are filtered out by Granger causality test and the grey relational analysis, to represent the domestic situation. Then, based on the domestic situation, KELM is utilized for medium-term RMB/USD forecasting. The empirical results show that the proposed KELM-based ensemble learning approach outperforms all other benchmark models in different forecasting horizons, which implies that the KELM-based ensemble learning approach is a powerful learning approach for exchange rates forecasting. 展开更多
关键词 exchange rate macroeconomic variables forecasting kernel extreme learning machine
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