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IABC robotic evolutionary model for the foreign exchange rate prediction in Central America trading agreement events

机译:IABC机器人进化模型用于中美洲贸易协定事件中的汇率预测

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Taiwanese economy is extremely export-oriented. However, Taiwan also starts to actively look for opportunities for participation, because of the slowdown of multinational liberalizations, and as a result of the advance of the regional economic integration trend. As an example, Taiwan vigorously participates in FTAs with countries in Asia and Central America. International economic conditions are significantly important to the international trade and the volume of export/import volume, which is affected by the foreign exchange rate. If contemporary researchers could take full advantage of the exchange rate forecasting, Taiwan could maximize its trade surplus, thus boosting the economic growth. Conventional foreign exchange rate forecasting is usually provided by analyzing many financial indices or with the time-series method. Our goal is to produce the foreign exchange rate forecasting result by the robotic way with an evolutionary computing method called Interactive Artificial Bee Colony algorithm. Based on the event study methodology, the selected agreements include four FTA that are ECFA, BIA, ASTEP and ANZTEC, and the observation period setting is 70 days of pre-event period and 70 days of post-event period. This paper uses time series model (GARCH, EGARCH) and Interactive artificial bee colony (IABC) to establish the exchange rate predicting models. In addition, we adopt Mean Absolutely Percentage Error (MAPE) to compare the accuracy of exchange rate prediction. There are many exchange rate predicting models and the most frequently one to conduct maybe the time series model. This research reveals that even the IABC is relatively new it is the model has the best predictive ability among all the models.
机译:台湾经济极度以出口为导向。但是,由于跨国自由化的放慢以及区域经济一体化趋势的发展,台湾也开始积极寻找参与的机会。例如,台湾与亚洲和中美洲国家积极参加自由贸易协定。国际经济条件对国际贸易和进出口量都至关重要,而出口量和进口量受外汇汇率的影响。如果当代研究人员可以充分利用汇率的预测,台湾可以最大限度地增加贸易顺差,从而促进经济增长。常规汇率预测通常是通过分析许多财务指标或使用时间序列方法来提供的。我们的目标是通过一种称为交互式人工蜂群算法的进化计算方法,以机器人方式产生汇率预测结果。根据事件研究方法,选定的协议包括四个自由贸易区,分别是ECFA,BIA,ASTEP和ANZTEC,观察期设置为事件发生前70天和事件发生后70天。本文采用时间序列模型(GARCH,EGARCH)和交互式人工蜂群(IABC)建立汇率预测模型。此外,我们采用平均绝对百分比误差(MAPE)来比较汇率预测的准确性。汇率预测模型有很多,最经常使用的模型可能是时间序列模型。该研究表明,即使IABC相对较新,它也是该模型在所有模型中具有最佳预测能力的模型。

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