ARIMA Model based Time Series Modelling and Prediction of Foreign Exchange Rate against US Dollar

D. S. Dev, Aneervan Ray, Josh Austin
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Abstract

Exchange rate forecasting has proven challenging for players like traders and professionals in this current financial industry. Econometric and statistical models are often utilized in the analysis and forecasting of foreign exchange rate. Governments, financial organizations, and investors prioritize analyzing the future behaviour of currency pairs because this analyzing technique is being utilized to understand a country's economic status and to make a decision on whether to do any transactions of goods from that country. Several models are used to predict this kind of time-series with adequate accuracy. However, because of the random nature of these time series, strong predicting performance is difficult to achieve. During the Covid-19 situation, there is a drastic change in the exchange rate worldwide. This paper examines the behaviour of Australia's (AUD) daily foreign exchange rates against the US Dollar from January 2016 to December 2020 and forecasts the 2021 exchange rate using the ARIMA model. For better accuracy, technical indicators such as Interest Rate Differential, GDP Growth Rate and Unemployment Rate are also taken into account. In exchange rate forecasting, there are various types of performance measures based on which the accuracy of the forecasted result is computed. This paper examines seven performance measures and found that the accuracy of the forecasted results is adequate with the actual data.
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基于ARIMA模型的外汇对美元汇率时间序列建模与预测
事实证明,汇率预测对于当前金融行业的交易员和专业人士来说具有挑战性。在外汇汇率的分析和预测中经常使用计量经济和统计模型。政府、金融机构和投资者优先考虑分析货币对的未来行为,因为这种分析技术被用来了解一个国家的经济状况,并决定是否与该国的商品进行任何交易。有几种模型用于预测这类时间序列,具有足够的精度。然而,由于这些时间序列的随机性,很难实现强预测性能。在新冠肺炎疫情期间,全球汇率发生了巨大变化。本文研究了2016年1月至2020年12月期间澳大利亚(AUD)每日兑美元汇率的行为,并使用ARIMA模型预测了2021年的汇率。为了提高准确性,还考虑了利率差、GDP增长率和失业率等技术指标。在汇率预测中,有各种类型的绩效度量,根据这些度量来计算预测结果的准确性。本文考察了七个绩效指标,发现预测结果与实际数据的准确性是足够的。
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