Generalized Autoregressive Conditional Heteroskedastic Model to Examine Silver Price Volatility and Its Macroeconomic Determinant in Ethiopia Market

IF 1 Q3 STATISTICS & PROBABILITY Journal of Probability and Statistics Pub Date : 2020-05-25 DOI:10.1155/2020/5095181
A. W. Ayele, Emmanuel Gabreyohannes, Hayimro Edmealem
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引用次数: 6

Abstract

Like most commodities, the price of silver is driven by supply and demand speculation, which makes the price of silver notoriously volatile due to the smaller market, lower market liquidity, and fluctuations in demand between industrial and store value use. The concern of this article was to model and forecast the silver price volatility dynamics on the Ethiopian market using GARCH family models using data from January 1998 to January 2014. The price return series of silver shows the characteristics of financial time series such as leptokurtic distributions and thus can suitably be modeled using GARCH family models. An empirical investigation was conducted to model price volatility using GARCH family models. Among the GARCH family models considered in this study, ARMA (1, 3)-EGARCH (3, 2) model with the normal distributional assumption of residuals was found to be a better fit for price volatility of silver. Among the exogenous variables considered in this study, saving interest rate and general inflation rate have a statistically significant effect on monthly silver price volatility. In the EGARCH (3, 2) volatility model, the asymmetric term was found to be positive and significant. This is an indication that the unanticipated price increase had a greater impact on price volatility than the unanticipated price decrease in silver. Then, concerned stockholders such as portfolio managers, planners, bankers, and investors should intervene and pay due attention to these factors in the formulation of financial and related market policy.
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埃塞俄比亚市场银价波动及其宏观经济决定因素的广义自回归条件异方差模型
像大多数商品一样,白银的价格是由供需投机驱动的,这使得白银的价格波动很大,因为市场较小,市场流动性较低,工业和储存价值用途之间的需求波动。本文关注的是利用GARCH家族模型,利用1998年1月至2014年1月的数据,对埃塞俄比亚市场上的白银价格波动动态进行建模和预测。白银价格收益序列表现出金融时间序列的细峰分布等特征,适合用GARCH族模型进行建模。利用GARCH族模型对价格波动进行了实证研究。在本文考虑的GARCH家族模型中,残差假设为正态分布的ARMA (1,3)-EGARCH(3,2)模型更适合银的价格波动。在本研究考虑的外生变量中,储蓄利率和一般通货膨胀率对银价月度波动的影响具有统计学意义。在EGARCH(3,2)波动率模型中,发现不对称项为正且显著。这表明意外的价格上涨对价格波动的影响大于意外的银价下跌。然后,相关的股东,如投资组合经理,规划师,银行家和投资者应该介入,并在制定金融和相关市场政策时给予这些因素应有的重视。
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来源期刊
Journal of Probability and Statistics
Journal of Probability and Statistics STATISTICS & PROBABILITY-
自引率
0.00%
发文量
14
审稿时长
18 weeks
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