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首页> 外文期刊>Journal of statistical theory and practice >Predictive inference for bivariate data: Combining nonparametric predictive inference for marginals with an estimated copula
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Predictive inference for bivariate data: Combining nonparametric predictive inference for marginals with an estimated copula

机译:双变量数据的预测推断:将针对边际的非参数预测推断与估计的copula相结合

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摘要

This article presents a new method for prediction of an event involving a future bivariate observation. The method combines nonparametric predictive inference (NPI) applied to the marginals with a parametric copula to model and estimate the dependence structure between two random quantities, as such, the method is semiparametric. In NPI, uncertainty is quantified through imprecise probabilities. The resulting imprecision in the marginals provides robustness with regard to the assumed parametric copula. Due to the specific nature of NPI, the estimation of the copula parameter is also quite straightforward. The performance of this method is investigated via simulations, with particular attention to robustness with regard to the assumed copula in case of small data sets. The method is further illustrated via two examples, using small data sets from the literature. This article presents several novel aspects of statistical inference. First, the link between NPI and copulas is powerful and attractive with regard to computation. Second, statistical methods using imprecise probability have gained substantial attention in recent years, where typically imprecision is used on aspects for which less information is available. This article presents a different approach, namely, imprecision mainly being introduced on the marginals, for which there is typically quite sufficient information, in order to provide robustness for the harder part of the inference, namely the copula assumptions and estimation. Third, the setup of the simulations to evaluate the performance of the proposed method is novel; key to these are frequentist comparisons of the success proportion of predictions with the corresponding data-based lower and upper predictive inferences. All these novel ideas can be applied far more generally to other inferences and models, while also many alternatives can be considered. Hence, this article presents the starting point of an extensive research program towards powerful predictive inference methods for multivariate data.
机译:本文介绍了一种预测涉及未来双变量观测值的事件的新方法。该方法将应用于边际的非参数预测推理(NPI)与参数copula相结合,以建模和估计两个随机量之间的依存关系,因此该方法是半参数的。在NPI中,不确定性是通过不精确的概率来量化的。所产生的边缘不精确性为假定的参数copula提供了鲁棒性。由于NPI的特殊性质,copula参数的估计也非常简单。通过仿真研究了该方法的性能,特别是在数据量较小的情况下,对假设的copula的鲁棒性。通过两个例子,使用文献中的小数据集进一步说明了该方法。本文介绍了统计推断的几个新颖方面。首先,NPI和关联函数之间的链接在计算方面很强大且具有吸引力。其次,近年来,使用不精确概率的统计方法引起了广泛关注,其中通常在信息较少的方面使用不精确。本文提出了一种不同的方法,即主要在边际上引入不精确性,对于不精确性通常有足够的信息,以便为推理的较难部分(即copula假设和估计)提供鲁棒性。第三,用于评估所提出方法的性能的仿真设置是新颖的。这些的关键是将预测的成功比例与相应的基于数据的较低和较高的预测推断进行频繁的比较。所有这些新颖的思想都可以更广泛地应用于其他推论和模型,同时还可以考虑许多替代方案。因此,本文介绍了针对多元数据的强大预测推理方法的广泛研究计划的起点。

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