预测新兴市场外汇即期汇率:AR(1)方法

D. Maroney
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引用次数: 0

摘要

本文提出了一种预测外汇即期汇率的方法。该数据集由彭博社定义的新兴市场彭博外汇即期汇率组成。样本内数据集包括2013年8月至2019年3月期间10个新兴市场的每周外汇即期汇率。我们的样本跨度为2019年3月至11月。PACF测试显示,最合适的模型是AR(1)。将AR(1)模型应用于数据后,结合AIC和Log-Likelihood标准以及sigma平方测量来确定最佳拟合的即期汇率。考虑到样本量相同,3个即期汇率相对于其他即期汇率具有最佳拟合性。将相关的AR(1)模型应用于外样本数据,强调使用只做多的方法,以避免空头风险,在所有三种外汇即期汇率中产生负回报。使用外样本来检验AR(1)预测的适用性补充了模型内标准:AIC,对数似然和西格玛平方。外样本结果强调,在实践中,AR(1)模型不一定会在新兴外汇市场产生正回报。
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Forecasting Emerging Market FX Spot Rates: An AR(1) approach
This paper outlines a method to forecast FX spot rates. The data set consists of the Bloomberg FX spot rates for emerging markets as defined by Bloomberg. The in-sample data set consisted of weekly FX spot rates for ten Emerging markets, from August 2013 to March 2019. The out sample spanned March to November 2019. PACF tests revealed that the most appropriate model would be an AR(1). After applying the AR(1) model to the data a combination of AIC and Log-Likelihood criteria as well as a sigma squared measure were applied to determine the spot rates with the best fit. 3 spot rates remained that had the best fit relative to the other spot rates given that the sample sizes were identical. Applying the relevant AR(1) models to the out-sample data highlighted that using a long-only approach, to avoid short side risk, produced negative returns in all three FX spot rates. The use of an out-sample to test the applicability of the AR(1) forecast supplements the within model criteria: AIC, Log-likelihood and sigma squared. The out-sample results highlight that in practice an AR(1) model may not necessarily produce positive returns in Emerging FX markets.
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