新兴市场基础设施行业回报波动性的建模与预测

R. Magweva, M. Sibanda
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引用次数: 1

摘要

了解特定经济部门的波动行为,使投资者能够制定可行的投资策略,使政策制定者能够制定抑制过度波动的政策。本研究考察了新兴市场基础设施行业的波动性特征。评估的特征是GARCH效应、波动性持久性和杠杆效应。采用正态和非正态误差分布下的一阶EGARCH和GJRGARCH模型来分析新兴市场基础设施收益的波动行为。两种模型在所有分布下的结果表明,新兴国家基础设施部门存在GARCH效应、波动性聚类效应、波动性持续性效应和杠杆效应。这意味着过去的条件方差在确定当前的条件方差方面是重要的,从而使预测成为一项有价值的任务。研究结果还表明,对新兴市场基础设施行业感兴趣的投资者,应在评估风险价值时考虑杠杆效应。此外,在进行投资决策时,应关注均值-方差组合优化以外的因素,考虑杠杆效应、过度峰度和偏度。最后,鼓励新兴市场基础设施领域的投资者制定对冲策略,因为他们面临着巨大的风险和不确定性。
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Modeling and Forecasting the Volatility of Returns in the Infrastructure Sector in Emerging Markets
Understanding the volatility behaviour of specific sectors of the economy enables investors to formulate workable investment strategies, and policy-makers to formulate policies that dampen excess volatility. This study examined the volatility features of the infrastructure sector in emerging markets. The features assessed were the GARCH effects, volatility persistence, and leverage effects. EGARCH and GJRGARCH models of order one under normal and non-normal error distributions were employed to unpack the volatility behaviour of infrastructure returns in emerging markets. The results from both models under all distributions indicated the existence of GARCH effects, volatility clustering, volatility persistence, and leverage effects in the infrastructure sector in emerging nations. This implies that past conditional variance is significant in determining current conditional variance, thereby rendering forecasting a worthwhile task. The findings also suggest that investors interested in the infrastructure sector in emerging markets should incorporate leverage effects in their estimation of value-at-risk. Furthermore, they should focus on factors other than mean-variance portfolio optimization and consider leverage effects, excess kurtosis, and skewness when making investment decisions. Finally, investors in the infrastructure sector in emerging markets are encouraged to formulate hedging strategies as they are exposed to significant risk and uncertainty.
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