使用GARCH家族模型估计埃塞俄比亚食品和非食品通货膨胀水平

T. Abebe
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摘要

通货膨胀波动性的增加意味着未来价格的不确定性增加。因此,生产者和消费者可能受到通货膨胀波动加剧的影响,因为它增加了市场的不确定性和风险。因此,寻找一个合适的模型来预测市场的未来状况,成为通货膨胀波动率研究的重点。本研究旨在拟合1971年1月至2020年6月期间食品和非食品通货膨胀率的ARMA-GARCH家族模型。由于研究的主要目标是为膨胀序列确定一个适当的模型,因此在比较两种模型时定义了零假设和备选假设。H0:对称GARCH模型更好地反映了埃塞俄比亚的通货膨胀波动。H1:不对称GARCH模型更好地反映了埃塞俄比亚的通货膨胀波动。ARMA-GARCH家族模型用于捕捉金融时间序列的风格化事实,如细峰效应、波动聚类和杠杆效应。平均模型结果表明,ARMA(1,2)和ARIMA(0,1,1)模型分别被确定为食品和非食品通胀的最佳拟合模型。从波动率模型的估计结果来看,残差为Student's t-分布的非对称TGARCH(1,1)模型是非食品通货膨胀的最佳模型。因此,信息建模,新闻事件是波动性的非常重要的决定因素,GARCH家族模型适用于所考虑的研究期间埃塞俄比亚的给定序列(每月食品通胀波动)。
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Using Models of the GARCH Family to Estimate the Level of Food and Non-Food Inflation in Ethiopia
An increase in inflation volatility implies higher uncertainty about future prices. As a result, producers and consumers can be affected by the increased inflation volatility, because it increases the uncertainty and the risk in the market. Thus, inflation volatility attracts the attention of researchers to find a suitable model which can predict the future conditions of the market. This study aims to fit appropriate ARMA-GARCH family models for food and non-food inflation rate of from the period January 1971 through June 2020. Since the main objective of the study is identifying an appropriate model for inflation series, the null and alternative hypotheses are defined in comparison of the two types of models. H0: The symmetric GARCH models better capture inflation volatility of Ethiopia. H1: The asymmetric GARCH models better capture inflation volatility of Ethiopia. The ARMA-GARCH family models were applied to capture the stylized facts of financial time series such us leptokurtic, volatility clustering and leverage effects. The mean model results show that, an ARMA (1, 2) and ARIMA (0, 1, 1) models are identified as the best fitted model for food and non-food inflation, respectively. From the estimation results of volatility model, an asymmetric TGARCH (1, 1) model with Student's t- distributional assumptions of the residual is the best model for non-food inflation. Thus, modeling of information, news of events is very significant determinants of volatility and GARCH family models are appropriate for the given series (monthly food-inflation volatility) of Ethiopia under the study period considered.
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