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Semiparametric Conditional Quantile Estimation Through Copula-Based Multivariate Models

机译:基于Copula的多元模型的半参数条件分位数估计

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摘要

We consider a new approach in quantile regression modeling based on the copula function that defines the dependence structure between the variables of interest. The key idea of this approach is to rewrite the characterization of a regression quantile in terms of a copula and marginal distributions. After the copula and the marginal distributions are estimated, the new estimator is obtained as the weighted quantile of the response variable in the model. The proposed conditional estimator has three main advantages: it applies to both iid and time series data, it is automatically monotonic across quantiles, and, unlike other copula-based methods, it can be directly applied to the multiple covariates case without introducing any extra complications. We show the asymptotic properties of our estimator when the copula is estimated by maximizing the pseudo-log-likelihood and the margins are estimated nonparametrically including the case where the copula family is misspecified. We also present the finite sample performance of the estimator and illustrate the usefulness of our proposal by an application to the historical volatilities of Google and Yahoo.
机译:我们考虑基于copula函数的分位数回归建模中的一种新方法,该函数定义了目标变量之间的依存结构。这种方法的关键思想是根据copula和边际分布重写回归分位数的特征。在估计了copula和边际分布之后,获得了新的估计量,作为模型中响应变量的加权分位数。提出的条件估计器具有三个主要优点:它适用于iid和时间序列数据,它在分位数上是自动单调的,并且与其他基于copula的方法不同,它可以直接应用于多个协变量情况,而不会引入任何其他复杂性。当通过最大化伪对数似然来估计copula时,我们显示了估计器的渐近性质,并且在不指定copula族的情况下,非参数地估计了边距。我们还介绍了估计器的有限样本性能,并通过将应用程序应用于Google和Yahoo的历史波动率来说明我们的建议的有用性。

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