Abstract Vine copula based likelihood estimation of dependence patterns in multivariate event time data
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Vine copula based likelihood estimation of dependence patterns in multivariate event time data

机译:基于vine copula在多元事件时间数据中依赖模式的似然估计

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AbstractIn many studies multivariate event time data are generated from clusters having a possibly complex association pattern. Flexible models are needed to capture this dependence. Vine copulas serve this purpose. Inference methods for vine copulas are available for complete data. Event time data, however, are often subject to right-censoring. As a consequence, the existing inferential tools, e.g.?likelihood estimation, need to be adapted. A two-stage estimation approach is proposed. First, the marginal distributions are modeled. Second, the dependence structure modeled by a vine copula is estimated via likelihood maximization. Due to the right-censoring single and double integrals show up in the copula likelihood expression such that numerical integration is needed for its evaluation. For the dependence modeling a sequential estimation approach that facilitates the computational challenges of the likelihood optimization is provided. A three-dimensional simulation study provides evidence for the good finite sample performance of the proposed method. Using four-dimensional mastitis data, it is shown how an appropriate vine copula model can be selected for data at hand.]]>
机译:<![cdata [ Abstract 在许多研究中,多变量事件时间数据来自具有可能复杂关联模式的簇生成。需要灵活的型号来捕获这种依赖。藤币为此目的服务。 vine copulas的推理方法可用于完整数据。然而,事件时间数据通常经常受到右审查。因此,需要调整现有的推理工具,例如,估计。提出了一种两级估计方法。首先,建模边缘分布。其次,通过似然最大化估计由葡萄拷贝建模的依赖性结构。由于右缩回单个和双积分显示在Copula似然表达中,使得其评估需要数值集成。对于依赖性建模,提供了促进促进似然优化的计算挑战的顺序估计方法。三维仿真研究提供了该方法的良好有限样本性能的证据。使用四维乳腺炎数据,显示了如何选择适当的葡萄藤模型。 ]]>

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