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Efficient estimation of a semiparametric dynamic copula model

机译:半参数动态copula模型的有效估计

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A new semiparametric dynamic copula model is proposed where the marginals are specified as parametric GARCH-type processes, and the dependence parameter of the copula is allowed to change over time in a nonparametric way. A straightforward two-stage estimation method is given by local maximum likelihood for the dependence parameter, conditional on consistent first stage estimates of the marginals. First, the properties of the estimator are characterized in terms of bias and variance and the bandwidth selection problem is discussed. The proposed estimator attains the semiparametric efficiency bound and its superiority is demonstrated through simulations. Finally, the wide applicability of the model in financial time series is illustrated, and it is compared with traditional models based on conditional correlations.
机译:提出了一种新的半参数动态copula模型,其中将边际指定为参数GARCH类型的过程,并且允许copula的依赖参数以非参数方式随时间变化。一种直接的两阶段估计方法是通过对依赖项参数的局部最大似然给出的,条件是对边际的第一阶段进行一致的估计。首先,根据偏差和方差来表征估计器的性质,并讨论带宽选择问题。所提出的估计器达到了半参数效率范围,并且通过仿真证明了其优越性。最后,说明了该模型在金融时间序列中的广泛适用性,并将其与基于条件相关性的传统模型进行了比较。

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