基于Google趋势和长短期记忆宏观经济数据的印尼航空交通预测

Muhammad Khanif Khafidli, A. Choiruddin
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引用次数: 0

摘要

2019冠状病毒病大流行对许多行业产生了影响。例如,在航空部门,飞行交通急剧下降,没有恢复的把握。这需要一种方法来预测飞行交通,以提供飞行计划、航线结构和飞行导航服务成本确定方面的战略规划。然而,目前的发展主要集中在基于历史数据的飞行交通预测,而不考虑外部因素。在这项研究中,我们提出了长短期记忆(LSTM)技术来预测印尼的航班交通,包括宏观经济变量和谷歌趋势等外部变量。LSTM因其对非线性时间序列数据建模的灵活性和预测精度而被提出。我们首先使用非线性分析和互相关函数(CCF)从谷歌趋势和宏观经济变量中选择一些。然后,我们使用选定的变量来预测飞行流量,并将其与仅使用历史飞行流量数据的变量进行比较。我们的研究结果表明,基于均方根误差(RMSE)和平均绝对百分比误差(MAPE),涉及谷歌趋势的模型优于其他三种模型,即仅包含历史数据的模型、包含宏观经济的模型和同时包含宏观经济和谷歌趋势的模型。这是因为,在这个数字时代,谷歌趋势可以以最新的方式反映人口心理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Forecast of Aviation Traffic in Indonesia Based on Google Trend and Macroeconomic Data using Long Short-Term Memory
The COVID-19 pandemic has impacted many sectors. For example, in the aviation sector, flight traffic went down drastically with no certainty of being recovered. This calls for a methodology to predict the flight traffic to provide strategic planning on flight schedules operational, route structuring, and flight navigation service cost determination. However, current developments mainly focus on flight traffic forecasting based on historical data without considering external factors. In this study, we propose the Long Short-Term Memory (LSTM) technique to forecast flight traffic in Indonesia involving external variables such as macroeconomic variables and Google Trends. LSTM is proposed because of its flexibility to model non-linear time series data and has a good reputation for predictive accuracy. We first select a few among Google Trends and macroeconomic variables using nonlinearity analysis and cross-correlation function (CCF). We then employ the selected variables to forecast the flight traffic and compare it to the one using only historical flight traffic data. Our results concluded, based on the Root Mean Square Error (RMSE) and Mean Absolute Percentage Error (MAPE), that the model involving google trend outperforms the other three models, i.e., the model with only historical data, the model with macroeconomics, and the model with both macroeconomic and Google Trends. It is because, in this digital era, Google Trends can reflect population psychology in an up-to-date manner.
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