MODELING AND FORECASTING VOLATILITY OF STOCK MARKET USING FAMILY OF GARCH MODELS: EVIDENCE FROM CPEC LINKED COUNTRIES

IF 1 Q3 ECONOMICS
T. R. Fraz, Samreen Fatima
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引用次数: 1

Abstract

For economists and investors, it is necessary to understand the random and nonlinear pattern of the stock market volatility. High volatility directly affects the financial market that leads to unpredictability. China–Pakistan Economic Corridor attracts economists and investors worldwide. Therefore, predicting the volatility of the stock markets related to CPEC is important. In this study we consider the most important stock markets lying on the route of CPEC, namely KSE 100 (Pakistan), SSE 100 (China), TADAWUL (Kingdom of Saudi Arabia), KASE (Kazakhstan), KLSE (Malaysia), BIST (Turkey), MOEX (Russia), FTSE (United Kingdom) and CAC40 (France). The daily returns of stock market indices consist of 1706 observations from December 2014 to July 2021. After the confirmation from the ARCH effect test, family GARCH models are employed, among them, based on AIC and BIC criteria, GARCH (1,1), EGARCH (1,1), and GARCH-M (1,1) are found suitable to forecast the volatility. The empirical study also suggests that the out-of-sample forecast GARCH-M (1,1) model is more appropriate as it has a minimum value of MAE, MSE, RMSE, MAPE, TheilU1, and Theil U2 among all the studied GARCH models. Furthermore, it is also found that the KSE-100 and SSE-100 have moderate and slow market average returns even though both stock markets are found to be the least risk-returns markets.
利用garch族模型建模和预测股市波动:来自中巴经济走廊相关国家的证据
对于经济学家和投资者来说,有必要了解股票市场波动的随机性和非线性模式。高波动性直接影响金融市场,导致不可预测性。中巴经济走廊吸引着世界各地的经济学家和投资者。因此,预测与中巴经济走廊相关的股市波动是很重要的。在本研究中,我们考虑了CPEC路线上最重要的股票市场,即KSE 100(巴基斯坦),SSE 100(中国),TADAWUL(沙特阿拉伯王国),KASE(哈萨克斯坦),KLSE(马来西亚),BIST(土耳其),MOEX(俄罗斯),FTSE(英国)和CAC40(法国)。股票市场指数的日收益由2014年12月至2021年7月的1706次观察结果组成。经ARCH效应检验确认后,采用家族GARCH模型,其中,基于AIC和BIC准则,GARCH(1,1)、EGARCH(1,1)和GARCH- m(1,1)适合预测波动率。实证研究还表明,样本外预测GARCH- m(1,1)模型在所有GARCH模型中MAE、MSE、RMSE、MAPE、TheilU1和theilu2的值最小,更为合适。此外,我们还发现,尽管KSE-100和SSE-100都是风险回报最小的市场,但它们的市场平均回报都是中等和缓慢的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
1.60
自引率
14.30%
发文量
4
期刊介绍: The GEJ seeks to publish original and innovative research, as well as novel analysis, relating to the global economy. While its main emphasis is economic, the GEJ is a multi-disciplinary journal. The GEJ''s contents mirror the diverse interests and approaches of scholars involved with the international dimensions of business, economics, finance, history, law, marketing, management, political science, and related areas. The GEJ also welcomes scholarly contributions from officials with government agencies, international agencies, and non-governmental organizations. One over-arching theme that unites IT&FA members and gives focus to this journal is the complex globalization process, involving flows of goods and services, money, people, and information.
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