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Bayesian Model Choice of Grouped t-Copula

机译:分组t-Copula的贝叶斯模型选择

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摘要

One of the most popular copulas for modeling dependence structures is t-copula. Recently the grouped t-copula was generalized to allow each group to have one member only, so that a priori grouping is not required and the dependence modeling is more flexible. This paper describes a Markov chain Monte Carlo (MCMC) method under the Bayesian inference framework for estimating and choosing t-copula models. Using historical data of foreign exchange (FX) rates as a case study, we found that Bayesian model choice criteria overwhelmingly favor the generalized t-copula. In addition, all the criteria also agree on the second most likely model and these inferences are all consistent with classical likelihood ratio tests. Finally, we demonstrate the impact of model choice on the conditional Value-at-Risk for portfolios of six major FX rates.
机译:用于建模依赖结构的最流行的系词之一是t-系词。最近,对已分组的t-copula进行了概括,以使每个组仅具有一个成员,因此不需要先验分组,并且依赖性建模更加灵活。本文描述了在贝叶斯推理框架下的马尔可夫链蒙特卡罗(MCMC)方法,用于估计和选择t-copula模型。使用外汇(FX)汇率的历史数据作为案例研究,我们发现贝叶斯模型选择准则绝对支持广义t-copula。此外,所有标准也都在第二种最可能的模型上达成一致,这些推论都与经典似然比检验一致。最后,对于六种主要外汇汇率的投资组合,我们证明了模型选择对条件风险价值的影响。

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