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Asymmetric Influence Detection and Forecasting of Global Stock Markets Based on the Copula Theory

机译:基于Copula理论的全球股票市场非对称影响检测与预测

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Correlation analysis of financial markets is an important starting point for modern financial theory of financial market risks. Along with the deepening of financial globalization, global financial markets have become more and more interdependent. Correlation analysis of global financial markets has become a hot issue for many scholars. On the basis of an in-depth study of Copula theory, this paper applies the theory to the asymmetric correlation analysis of the global major stock market indexes. First, asymmetric correlations among the selected stock indexes are modeled and detected using the relevant metrics of the Copula function on the logarithmic yield of stock indexes; The detected asymmetric correlations are put together to form a directed acyclic graph. Then, artificial neural networks (ANN) are used as a nonlinear model to predict the nearest future of the target stock index; the prediction accuracy is measured in terms of hit rate and mean square error. Test is done on historical daily data with the results showing that the Copula correlation coefficients are more informative for finding the influential leading markets for the predefined target market better than the traditional linear correlation coefficients. The hit rate of the ANN prediction using the detected leading markets found by Copula correlation coefficients is about 3% to 10% higher than that by the linear correlation coefficients.
机译:金融市场的相关性分析是现代金融理论中金融市场风险的重要起点。随着金融全球化的深入发展,全球金融市场越来越相互依存。全球金融市场的相关分析已成为许多学者的热点问题。在对Copula理论进行深入研究的基础上,将其应用于全球主要股票市场指数的非对称相关分析。首先,使用Copula函数的相关度量对股票指数的对数收益建模并检测所选股票指数之间的不对称相关性;将检测到的不对称相关性放在一起以形成有向无环图。然后,将人工神经网络(ANN)用作非线性模型来预测目标股票指数的最接近未来。预测准确性是根据点击率和均方误差来衡量的。对历史每日数据进行了测试,结果表明,与传统的线性相关系数相比,Copula相关系数对于为预定目标市场找到有影响力的领先市场更具信息意义。使用Copula相关系数发现的使用检测到的领先市场的ANN预测的命中率比线性相关系数的命中率高约3%至10%。

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