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Modeling and forecasting exchange rate volatility in Bangladesh using GARCH models: a comparison based on normal and Student’s t-error distribution

机译:使用GARCH模型对孟加拉国的汇率波动进行建模和预测:基于正态和学生的 t -误差分布的比较

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Abstract Background Modeling exchange rate volatility has remained crucially important because of its diverse implications. This study aimed to address the issue of error distribution assumption in modeling and forecasting exchange rate volatility between the Bangladeshi taka (BDT) and the US dollar ($). Methods Using daily exchange rates for 7 years (January 1, 2008, to April 30, 2015), this study attempted to model dynamics following generalized autoregressive conditional heteroscedastic (GARCH), asymmetric power ARCH (APARCH), exponential generalized autoregressive conditional heteroscedstic (EGARCH), threshold generalized autoregressive conditional heteroscedstic (TGARCH), and integrated generalized autoregressive conditional heteroscedstic (IGARCH) processes under both normal and Student’s t -distribution assumptions for errors. Results and Conclusions It was found that, in contrast with the normal distribution, the application of Student’s t -distribution for errors helped the models satisfy the diagnostic tests and show improved forecasting accuracy. With such error distribution for out-of-sample volatility forecasting, AR(2)–GARCH(1, 1) is considered the best.
机译:摘要背景由于汇率波动的影响多种多样,因此对汇率波动进行建模仍然至关重要。这项研究旨在解决在建模和预测孟加拉塔卡(BDT)与美元($)之间的汇率波动时的误差分布假设问题。方法使用7年(2008年1月1日至2015年4月30日)的每日汇率,对以下模型进行动力学建模:广义自回归条件异方差(GARCH),不对称幂ARCH(APARCH),指数广义自回归条件异方差(EGARCH) ),阈值广义自回归条件异方差(TGARCH)和综合广义自回归条件异方差(IGARCH)过程在正态和学生t分布假设下均具有误差。结果与结论发现,与正态分布相比,对误差的Student t分布的应用有助于模型满足诊断测试并显示出更高的预测准确性。利用这种误差分布进行样本外波动率预测,AR(2)–GARCH(1,1)被认为是最佳的。

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