The Dynamics of US Gasoline Demand and Its Prediction: An Extended Dynamic Model Averaging Approach
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Keywords
gasoline demand; dynamic model averaging (DMA); artificial bee colony (ABC); time-varying parameter; dynamic model;All these keywords.
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