Title of article
GJR-Copula-CVaR Model for Portfolio Optimization: Evidence for Emerging Stock Markets
Author/Authors
Nikusokhan, Moien Faculty of Management and Accounting - Shahid Beheshti University, Tehran
Pages
26
From page
990
To page
1015
Abstract
This paper empirically examines the impact of dependence structure between the assets on the portfolio optimization, composed of Tehran Stock Exchange Price Index and Borsa Istanbul 100 Index. In this regard, the method of the Copula family functions is proposed as powerful and flexible tool to determine the structure of dependence. Finally, the impact of the dependence structure on the risk identification and the optimized portfolio selection, will be analyzed. The results show that the t-student copula function provides the best performance among other Copula functions. Also, empirical evidence suggests that the performance of the GJR-Copula-CVaR method is relatively more accurate and more flexible than other common methods of optimization.
Keywords
Portfolio Optimization , Conditional Value at Risk , Copula Functions , Dependence Structure
Journal title
Iranian Economic Review (IER)
Serial Year
2018
Record number
2504859
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