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Methanol futures hedging with skewed normal distribution by copula method

有由性交方法的扭曲的正常分发的甲醇期货 hedging

作     者:Yu, Xing Wang, Xinxin Zhang, Weiguo Zheng, Chengli 

作者机构:Cent China Normal Univ Sch Econ & Business Adm Wuhan 430079 Peoples R China South China Univ Technol Sch Business Adm Guangzhou Peoples R China 

出 版 物:《INTERNATIONAL JOURNAL OF COMPUTER MATHEMATICS》 (国际计算机数学杂志)

年 卷 期:2021年第98卷第7期

页      面:1327-1348页

核心收录:

学科分类:07[理学] 070104[理学-应用数学] 0701[理学-数学] 

基  金:Funds for International Cooperation and Exchange of theNationalNatural Science Foundation of China National Natural Science Foundation of China Natural Science Fund of Guangdong [2014A030310454] Financial Service Innovation and RiskManagement Research Base of Guangzhou Fundamental Research Funds for the Central Universities [CCNU19TD006, CCNU20TD007, CCNU19TS062] Humanities and Social Science Planning Fund from Ministry of Education [16YJAZH078] Raising initial capital for High-level Talents of Central China Normal University 

主  题:Futures hedging skewed normal distribution methanol price copula method genetic algorithm artificial bee colony algorithm 

摘      要:As an environmental protection fuel, methanol is widely used in national economy. The tremendous price fluctuation of methanol makes risk avoidance an important issue. However, traditional normal hypothesis in the existing literature underestimates the potential risk and leads to an inefficient hedging strategy, so we studied hedging strategy with methanol futures contracts based on the skewed normal hypothesis. Considering that copula methods allow us to construct a flexible multivariate distribution when solving the problem of asymmetry and nonlinearity, the dependence structure between spot and futures return is modelled through copula functions in this paper. Since likelihood equations do not have explicit solutions in the context of skewed normal, Genetic Algorithm is used to estimate the parameters of a skew normal distribution. To deal with the complexity of the proposed model, the artificial bee colony algorithm is adopted to search for the optimal solutions. Empirical results show that skewed normal distribution can represent the distribution characteristics of return better and improve the hedging effectiveness. Gaussian copula describes the dependence structure of spot and futures quite well. The algorithms designed to obtain the parameters in the marginal distributions and to find the optimal hedge ratio are effective and feasible.

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