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1.
运用Copula方法研究了含股指期货的投资组合的风险度量问题.首先采用不同的GARCH模型对单个资产收益率建模,然后选择Clayton Copula函数来描述投资组合各资产之间的相关结构,建立联合分布模型,进而采用Monte Carlo方法模拟产生各资产的收益率序列,计算出投资组合的VaR.Kupiec检验表明,ClaytonCopula-GARCH模型在投资组合风险度量上具有较高的准确性.  相似文献   

2.
本文运用Copula方法研究了含股指期货的投资组合的风险度量问题.由于股指期货和股票现货之间存在很大的相关性,因此在度量组合的风险时,各资产间的相关结构起到了关键作用,但这一相关结构很难用线性的相关系数去刻画,本文采用Copula模型来描述相关结构。而后,我们构建了基于Copula理论的风险度量指标PVaR,并验证了不同Copula模型的拟合效果.我们利用沪深300指数的数据来研究股指期货和现货的相关结构,并使用了多种Copula函数结合不同的边际分布假设进行了模拟,说明了Copula方法在风险度量尤其是包含了股指期货的投资组合的风险度量上具有较高的精确性.  相似文献   

3.
本文选取白银、铝和铜三种供应链金融质物作为研究对象,在分析三种质物收益率统计特征的基础上,引入Copula模型刻画供应链金融业务中质物收益率的“尖峰厚尾”特征以及质物收益率之间的非线性相关结构;采用Monte Carlo模拟方法测度考虑到极端情况下的质物组合价格风险值CVaR;利用时间平方根法则测度长周期视角下质物组合的价格风险。将CVaR与VaR测度结果进行对比,比较分析短期价格风险与长期价格风险,将Copula模型与传统风险测度方法下计算出的风险值进行对比,以期选取最优测度供应链金融质物组合长期价格风险模型。研究结果表明:从单一质物价格波动特征来看,三种单一质物的收益率均存在非正态分布和“尖峰厚尾”特征,具有一般金融资产收益率分布的特点。从模型的有效性来看,第一,CVaR比VaR能够更好地、全面地测度供应链金融质物组合的价格风险;第二,基于Copula模型的风险测度结果比传统集成风险测度结果的准确性高;第三,平方欧式距离法结果表明在五种Copula模型中,t-Copula是最优刻画供应链金融质物组合收益率间的相依关系的模型。从长短期风险测度结果来看,随着风险期限的增加,质物组合的价格风险值随之增大,以往研究中用短期风险测度往往会低估商业银行所面临的价格风险,不利于商业银行资金信贷的优化配置。得到的结论对我国商业银行开展供应链金融业务防范价格风险提供了量化支持。  相似文献   

4.
针对传统孤立使用GJR模型、极值理论、Copula理论进行风险分析的不足,把GJR模型、极值理论和Copula理论有机的结合起来,给出了基于Copula和极值理论的投资组合VaR的测度方法.首先利用GJR模型刻画单个资产收益率中的自相关和异方差现象,获得近似独立同分布的新息序列,再分别应用高斯核估计的方法、极值理论拟合新息序列的分布函数的内部和两尾,利用Copula函数有效捕抓了市场之间的波动溢出效应,最后使用Monte Carlo模拟法,计算出投资组合的VaR值.实证结果表明,基于Copula和极值理论的VaR度量方法比历史模拟法更有效.  相似文献   

5.
利用扭曲混合Copula和ARMA-GARCH-t模型,对包含2015年股灾和2016年熔断期间的上证综指、中证综合债和上证基金的投资组合风险相关性进行建模分析。研究表明:扭曲混合Copula模型较混合Copula模型能更好地拟合各资产日收益率间的相关结构,尤其是"厚尾"特性。并运用蒙特卡罗模拟法计算各资产的风险价值、预期损失和中位数损失并讨论其差异性,以期为关注风险管理的人们提供更多借鉴。  相似文献   

6.
利用Copula的特点,灵活选择边缘分布模型、Copula函数和时变参数演化方程,构建16个相关性模型.在此基础上,通过蒙特卡罗模拟,采用VaR和ES度量资产组合的市场风险,并通过回测检验比较不同模型的风险度量效果.以沪深300指数和恒生指数为样本构建投资组合进行实证研究,结果表明,边缘分布模型、Copula时变参数演化方程和Copula函数的选择会影响风险度量的精度.在构建的16个相关性模型中,边缘分布为MSM-EVT,时变参数演化方程为GAS模型,Copula函数为Rotated Gumbel Copula的MSM-EVT-R-GAS模型风险度量效果最好.  相似文献   

7.
国际多元化需要对投资组合的相关结构进行动态性测度,这样才能提供更有效的资产配置策略和资金的理想避险场所。当前资产组合相关结构的Copula分析中考虑变结构和时变性不足,在此基础上构建了包含变结构和时变的诊断方法——分布函数距离法和Vuong-Clarke法在内的Copula动态性诊断方法,同时将二维诊断问题推广至多维情形,接着利用模拟仿真验证了上述方法的有效性。最后将动态Copula应用于金砖国家和西方成熟市场的最优投资组合中,利用标准差、CVaR和DVaR并结合样本预测外推法对最优投资组合进行了评价分析。实证结果表明,最优投资组合策略受Copula动态性影响明显,金砖国家市场在国际金融危机影响下能发挥良好的风险规避作用,实时的动态性诊断方法也能帮助投资者更快速地调整投资策略。  相似文献   

8.
杨湘豫  肖璐 《经济数学》2009,26(3):29-35
利用多元阿基米德Copula捕捉多个金融资产间的相关结构,并利用非参数核密度估计描述单个金融资产的边缘分布,建立Copula-Kernel模型。利用该模型和VaR风险测度,结合Mente Carlo模拟技术,对我国股票型开放式基金-华夏成长基金的投资组合进行风险分析。  相似文献   

9.
利用Copula技术对我国开放式基金市场的投资组合进行了风险分析。为克服传统Copula模型对金融尾部数据刻画能力的不足,建立了半参数的多元Copula-GARCH模型,灵活地对各支基金的边缘分布进行拟合,刻画了开放式基金投资组合的相依结构。并利用基于Copula技术的蒙特卡洛模拟,对投资组合进行了VaR分析,结果证实了所建立模型的可行性和有效性。  相似文献   

10.
针对已有高阶矩组合投资模型中风险测度与模型求解的不足,本文构建动态高阶矩参数化组合投资决策模型(B-S-K)并给出其求解方案。首先,运用混频数据抽样分位数回归(MIDAS-QR)模型,充分挖掘高频数据信息,提高动态高阶矩风险测度的及时性、准确性和稳健性;其次,采用参数化组合投资策略,将资产特征变量、动态偏度风险和动态峰度风险纳入组合投资权重函数,大幅缩减待估计参数数目,提高模型求解效率。分别对中国股票市场的个股和行业板块指数进行实证,研究结果一致表明:第一,基于MIDAS-QR模型的动态高阶矩风险稳健性测度,不仅充分考虑了金融风险的时变特征,而且测度结果受异常值影响较小,是一个稳健且有效的测度方法;第二,市盈率、账面价值比、动态偏度风险与组合投资权重显著正相关,条件波动率、动态峰度风险与组合投资权重显著负相关,这些为组合投资决策提供了较好的机理性解释;第三,与等权方案、M-V模型、基准(B)模型和B-S模型等相比,本文构建的B-S-K模型,在收益、风险和风险调整收益等三个方面均表现出显著且稳定的优势。  相似文献   

11.
Because of regulation projects from control organisations such as the European solvency II reform and recent economic events, insurance companies need to consolidate their capital reserve with coherent amounts allocated to the whole company and to each line of business. The present study considers an insurance portfolio consisting of several lines of risk which are linked by a copula and aims to evaluate not only the capital allocation for the overall portfolio but also the contribution of each risk over their aggregation. We use the tail value at risk (TVaR) as risk measure. The handy form of the FGM copula permits an exact expression for the TVaR of the sum of the risks and for the TVaR-based allocations when claim amounts are exponentially distributed and distributed as a mixture of exponentials. We first examine the bivariate model and then the multivariate case. We also show how to approximate the TVaR of the aggregate risk and the contribution of each risk when using any copula.  相似文献   

12.
Because of regulation projects from control organisations such as the European solvency II reform and recent economic events, insurance companies need to consolidate their capital reserve with coherent amounts allocated to the whole company and to each line of business. The present study considers an insurance portfolio consisting of several lines of risk which are linked by a copula and aims to evaluate not only the capital allocation for the overall portfolio but also the contribution of each risk over their aggregation. We use the tail value at risk (TVaR) as risk measure. The handy form of the FGM copula permits an exact expression for the TVaR of the sum of the risks and for the TVaR-based allocations when claim amounts are exponentially distributed and distributed as a mixture of exponentials. We first examine the bivariate model and then the multivariate case. We also show how to approximate the TVaR of the aggregate risk and the contribution of each risk when using any copula.  相似文献   

13.
This paper is concerned with the statistical modeling of the dependence structure of multivariate financial data using the copula, and the application of copula functions in VaR valuation. After the introduction of the pure copula method and the maximum and minimum mixture copula method, authors present a new algorithm based on the more generalized mixture copula functions and the dependence measure, and apply the method to the portfolio of Shanghai stock composite index and Shenzhen stock component index. Comparing with the results from various methods, one can find that the mixture copula method is better than the pure Gaussian copula method and the maximum and minimum mixture copula method on different VaR level.  相似文献   

14.
多元Copula-GARCH模型及其在金融风险分析上的应用   总被引:7,自引:0,他引:7  
针对传统风险分析模型的不足,结合Copula技术和GARCH模型,提出了多元Copula-GARCH模型。指出该模型不仅可以捕捉金融市场间的非线性相关性,还可以得到更灵活的多元分布进而用于资产投资组合VaR分析。在详细探讨了基于Copula技术的资产投资组合的MonteCarlo仿真技术的基础上,运用具有不同边缘分布的多元Copula-GARCH模型,对上海股市进行了研究,结果证实了所提模型和方法的可行性和有效性。  相似文献   

15.
We devise a bottom-up dynamic model of portfolio credit risk where instantaneous contagion is represented by the possibility of simultaneous defaults. Due to a Markovian copula nature of the model, calibration of marginals and dependence parameters can be performed separately using a two-step procedure, much like in a standard static copula setup. In this sense this solves the bottom-up top-down puzzle which the CDO industry had been trying to do for a long time. This model can be used for any dynamic portfolio credit risk issue, such as dynamic hedging of CDOs by CDSs, or CVA computations on credit portfolios.  相似文献   

16.
Copula functions represent a methodology that describes the dependence structure of a multi-dimension random variable and has become one of the most significant new tools to handle risk factors in finance, such as Value-at Risk (VaR), which is probably the most widely used risk measure in financial institutions. Combining copula and the forecast function of the GARCH model, this paper proposes a new method, called conditional copula-GARCH, to compute the VaR of portfolios. This work presents an application of the copula-GARCH model in the estimation of a portfolio’s VaR, composed of NASDAQ and TAIEX. The empirical results show that, compared with traditional methods, the copula model captures the VaR more successfully. In addition, the Student-t copula describes the dependence structure of the portfolio return series quite well.  相似文献   

17.
Conditional Value at Risk (CVaR) is widely used in portfolio optimization as a measure of risk. CVaR is clearly dependent on the underlying probability distribution of the portfolio. We show how copulas can be introduced to any problem that involves distributions and how they can provide solutions for the modeling of the portfolio. We use this to provide the copula formulation of the CVaR of a portfolio. Given the critical dependence of CVaR on the underlying distribution, we use a robust framework to extend our approach to Worst Case CVaR (WCVaR). WCVaR is achieved through the use of rival copulas. These rival copulas have the advantage of exploiting a variety of dependence structures, symmetric and not. We compare our model against two other models, Gaussian CVaR and Worst Case Markowitz. Our empirical analysis shows that WCVaR can asses the risk more adequately than the two competitive models during periods of crisis.  相似文献   

18.
This paper further studies the single-period portfolio allocation of risk assets under the assumption that random returns having increasing utility and Archimedean copula. The shares of risk assets in the optimal allocation are proved to be ordered when marginal returns have the likelihood ratio order, and sufficient conditions for the joint density of returns of a multivariate risk to be arrangement increasing is built as well.  相似文献   

19.
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