Change Point Detection in the Conditional Correlation Structure of Multivariate Volatility Models
收藏Taylor & Francis Group2021-09-29 更新2026-04-16 收录
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https://tandf.figshare.com/articles/dataset/Change_Point_Detection_in_the_Conditional_Correlation_Structure_of_Multivariate_Volatility_Models/6938492/1
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资源简介:
We propose semi-parametric CUSUM tests to detect a change point in the correlation structures of non–linear multivariate models with dynamically evolving volatilities. The asymptotic distributions of the proposed statistics are derived under mild conditions. We discuss the applicability of our method to the most often used models, including constant conditional correlation (CCC), dynamic conditional correlation (DCC), BEKK, corrected DCC and factor models. Our simulations show that, our tests have good size and power properties. Also, even though the near–unit root property distorts the size and power of tests, de–volatizing the data by means of appropriate multivariate volatility models can correct such distortions. We apply the semi–parametric CUSUM tests in the attempt to date the occurrence of financial contagion from the U.S. to emerging markets worldwide during the great recession.
提供机构:
Zhao, Yuqian; Horváth, Lajos; Barassi, Marco
创建时间:
2018-08-07



