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FORECASTING CHINA'S FOREIGN TRADE VOLUME WITH A KERNEL-BASED HYBRID ECONOMETRIC-AI ENSEMBLE LEARNING APPROACH 被引量:5
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作者 Lean YU Shouyang WANG Kin Keung LAI 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2008年第1期1-19,共19页
Due to the complexity of economic system and the interactive effects between all kinds of economic variables and foreign trade, it is not easy to predict foreign trade volume. However, the difficulty in predicting for... Due to the complexity of economic system and the interactive effects between all kinds of economic variables and foreign trade, it is not easy to predict foreign trade volume. However, the difficulty in predicting foreign trade volume is usually attributed to the limitation of many conventional forecasting models. To improve the prediction performance, the study proposes a novel kernel-based ensemble learning approach hybridizing econometric models and artificial intelligence (AI) models to predict China's foreign trade volume. In the proposed approach, an important econometric model, the co-integration-based error correction vector auto-regression (EC-VAR) model is first used to capture the impacts of all kinds of economic variables on Chinese foreign trade from a multivariate linear anal- ysis perspective. Then an artificial neural network (ANN) based EC-VAR model is used to capture the nonlinear effects of economic variables on foreign trade from the nonlinear viewpoint. Subsequently, for incorporating the effects of irregular events on foreign trade, the text mining and expert's judgmental adjustments are also integrated into the nonlinear ANN-based EC-VAR model. Finally, all kinds of economic variables, the outputs of linear and nonlinear EC-VAR models and judgmental adjustment model are used as input variables of a typical kernel-based support vector regression (SVR) for en- semble prediction purpose. For illustration, the proposed kernel-based ensemble learning methodology hybridizing econometric techniques and AI methods is applied to China's foreign trade volume predic- tion problem. Experimental results reveal that the hybrid econometric-AI ensemble learning approach can significantly improve the prediction performance over other linear and nonlinear models listed in this study. 展开更多
关键词 Artificial neural networks error-correction vector auto-regression foreign trade prediction hybrid ensemble learning kernel-based method support vector regression.
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互动视角下纠错对外语学习的影响研究 被引量:3
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作者 缪海燕 《西安外国语大学学报》 CSSCI 2020年第3期53-58,共6页
本文依托大学外语师生互动任务,以英语过去时-ed为目标结构,通过对比纠错、不纠错的互动模式,考察了互动过程中纠错对外语学习的影响。结果显示,纠错的互动模式有利于-ed显性语法知识习得,但不提高隐性知识习得;不纠错的互动模式促进-e... 本文依托大学外语师生互动任务,以英语过去时-ed为目标结构,通过对比纠错、不纠错的互动模式,考察了互动过程中纠错对外语学习的影响。结果显示,纠错的互动模式有利于-ed显性语法知识习得,但不提高隐性知识习得;不纠错的互动模式促进-ed隐性知识习得,不作用于显性语法知识习得;两种互动模式的不同促学功效体现在互动过程中的语言协同;语言协同差异源于两种互动模式引发的不同注意聚集和语言使用主观能动性。 展开更多
关键词 师生互动 外语学习纠错 英语过去时-ed 语言协同
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