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International Conference on Information Technology and Computer Science, 3rd (ITCS 2011)Available to Purchase
Editor
V. E. Muhin,
V. E. Muhin
National Technical University of Ukraine
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ISBN:
9780791859742
No. of Pages:
656
Publisher:
ASME Press
Publication date:
2011
eBook Chapter
74 Tail Dependence in Asian Stock Markets Based on the Copula with Vine Structure Available to Purchase
By
Fengjing Cai
,
Fengjing Cai
School of Mathematics & Information Science,
Wenzhou University
, Wenzhou, Zhejiang Province
, China
; [email protected]
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Yuan Li
Yuan Li
School of Mathematics & Information Science,
Guangzhou University
, Guangzhou, Guangdong Province
, China
; [email protected]
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Page Count:
4
-
Published:2011
Citation
Cai, F, & Li, Y. "Tail Dependence in Asian Stock Markets Based on the Copula with Vine Structure." International Conference on Information Technology and Computer Science, 3rd (ITCS 2011). Ed. Muhin, VE, & Hu, WB. ASME Press, 2011.
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The SJC Copula function based on vine structure is applied to measure the tail dependence in Asian stock markets. Empirical result shows that tail dependence between stock returns is asymmetry. The lower tail dependence is stronger than the upper tail. Given the stock return, the conditional tail dependence is weaker. Especially, given the stock return of Hong Kong, the conditional tail dependence between China and other countries is close to zero.
Topics:
Stock markets
Abstract
Keywords
I. Introduction
II. A Pair-Copula Decomposition of a General Multivariate Distribution
III. Application
IV. Conclusion
References
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