Forecasting Philippines imports and exports using Bayesian artificial neural network and autoregressive integrated moving average

J. D. Urrutia, Alsafat M. Abdul, Jacky Boy E. Atienza
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引用次数: 12

Abstract

In this research, Autoregressive Integrated Moving Average (ARIMA) and Bayesian Artificial Neural Network (BANN) were used in forecasting the imports and exports of the Philippines and the comparison of two models are one of the main objective of this research. The data were gathered from Philippines Statistical Authority with a total of 100 observations from the first quarter of 1993 to fourth quarter of 2017. Furthermore, it can be determined in this research the best fit among the models in forecasting the imports and exports of the Philippines and the researchers will give the forecast values of imports and exports from the first quarter of year 2018 to the fourth quarter of year 2022 using the most fitted model. The researchers conducted a Statistical test in order to formulate and compare the statistical models of ARIMA and BANN for imports and exports then applied the forecasting accuracy such as MSE, NMSE, MAE, RMSE, and MAPE to compare the performance of the two models. By comparing the results, the researchers concluded that Bayesian Artificial Neural Network is the most fitted model in forecasting the imports and export of the Philippines. Upon using the Paired T-test, the p-value for both imports and exports are greater than the level of significance (α = 0.01) which means that there is no significant difference between actual and predicted values for both imports and exports of the Philippines. This study could help the economy of the Philippines by considering the forecasted Imports and Exports which can be used in analyzing the economy’s trade deficit.In this research, Autoregressive Integrated Moving Average (ARIMA) and Bayesian Artificial Neural Network (BANN) were used in forecasting the imports and exports of the Philippines and the comparison of two models are one of the main objective of this research. The data were gathered from Philippines Statistical Authority with a total of 100 observations from the first quarter of 1993 to fourth quarter of 2017. Furthermore, it can be determined in this research the best fit among the models in forecasting the imports and exports of the Philippines and the researchers will give the forecast values of imports and exports from the first quarter of year 2018 to the fourth quarter of year 2022 using the most fitted model. The researchers conducted a Statistical test in order to formulate and compare the statistical models of ARIMA and BANN for imports and exports then applied the forecasting accuracy such as MSE, NMSE, MAE, RMSE, and MAPE to compare the performance of the two models. By comparing the results, ...
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利用贝叶斯人工神经网络和自回归综合移动平均预测菲律宾进出口
本研究采用自回归综合移动平均(ARIMA)和贝叶斯人工神经网络(BANN)对菲律宾的进出口进行预测,两种模型的比较是本研究的主要目的之一。数据来自菲律宾统计局,从1993年第一季度到2017年第四季度共进行了100次观测。此外,在本研究中可以确定预测菲律宾进出口的模型中最适合的模型,研究人员将使用最适合的模型给出2018年第一季度至2022年第四季度的进出口预测值。为了制定ARIMA和BANN的进出口统计模型并进行比较,研究人员进行了统计检验,然后使用MSE、NMSE、MAE、RMSE、MAPE等预测精度对两种模型的性能进行了比较。通过对结果的比较,研究人员得出结论,贝叶斯人工神经网络是最适合预测菲律宾进出口的模型。在使用配对t检验时,进出口的p值都大于显著性水平(α = 0.01),这意味着菲律宾进出口的实际值与预测值之间没有显著差异。本研究可以通过考虑预测的进出口来帮助菲律宾的经济,这可以用于分析经济的贸易逆差。本研究采用自回归综合移动平均(ARIMA)和贝叶斯人工神经网络(BANN)对菲律宾的进出口进行预测,两种模型的比较是本研究的主要目的之一。数据来自菲律宾统计局,从1993年第一季度到2017年第四季度共进行了100次观测。此外,在本研究中可以确定预测菲律宾进出口的模型中最适合的模型,研究人员将使用最适合的模型给出2018年第一季度至2022年第四季度的进出口预测值。为了制定ARIMA和BANN的进出口统计模型并进行比较,研究人员进行了统计检验,然后使用MSE、NMSE、MAE、RMSE、MAPE等预测精度对两种模型的性能进行了比较。通过比较结果,……
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