上海和孟买股市关联性的实证分析

Li Zhongwu
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引用次数: 0

摘要

本文探讨了上海和孟买股票市场之间可能的联系,考虑了中国和印度之间的互补性(通过直接联系)和可替代性(通过间接联系)特征,以确认物理世界中的真实联系。我们采用Stock和Watson(1994)提出的动态OLS估计来估计两个变量之间的长期关系。考虑到金融数据的长记忆特征,我们将ARFIMA回归应用于由动态OLS估计得到的协整残差。将协整残差与d值的分数积分阶差进行差分,利用VECM方程估计了两个股票市场指数收益的长期和短期动态关系。在此基础上,运用DCC-MGARCH模型分析了ARCH效应、GARCH效应以及两股市场之间的波动传导。我们使用分位数回归方法研究两个市场在不同分位数上的依赖结构和强度。采用虚拟变量来区分危机前时期和危机中、危机后时期。
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Empirical Analyses of Linkages between Shanghai and Bombay Stock Markets
This paper explores the possible linkages between Shanghai and Bombay stock markets, accounting for complimentarity (through direct linkages) and substitutability (through indirect linkages) features between China and India to confirm real linkages in physical world. We employ a Dynamic OLS estimation proposed by Stock and Watson (1994) to estimate long run relationship between two variables. Considering the long memory feature of financial data, we apply the ARFIMA regression to our cointegrated residual derived from Dynamic OLS estimation. While differencing cointegrated residual with fractionally integrated order of d value, we estimate the long term and short dynamic relations of index returns in two stock markets, with the help of VECM equation. Furthermore, we apply a DCC-MGARCH model to analyze ARCH effect, GARCH effect, and volatility transmission between two stock markets. We use Quantile regression approach to study dependence structure and intensity at different quantiles between two markets. Dummy variables are taken to distinguish pre-crisis periods and in crisis, post-crisis periods.
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