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Predictive Inference for Bivariate Data with Nonparametric Copula

机译:具有非参数谱的双方数据的预测推断

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This study presents a new nonparametric method for prediction of a future bivariate observation, by combining non-parametric predictive inference (NPI) for the marginals with nonparametric copula. In this paper we specifically use kernel method to take dependence structure into account. NPI is a frequentist statistical framework for inference on a future observation based on past data observations. NPI uses lower and upper probabilities to quantify uncertainty and is based on only few modelling assumptions. While, copula is a well-known statistical concept for modelling dependence of random variables. A copula is a joint distribution function whose marginals are all uniformly distributed and it can be used to model the dependence separately from the marginal distributions. We estimate the copula density using kernel method and investigate the performance of this method via simulations. We discuss the simulation results to show how our method performs for different sample sizes and apply the method to data sets from the literature and briefly outline related challenges and opportunities for future research.
机译:本研究提出了一种新的非参数方法,用于通过将非参数预测推理(NPI)与非参数谱的边际的非参数预测推理(NPI)组合来预测未来双变量观察。在本文中,我们专门使用内核方法考虑依赖结构。 NPI是一种频繁的统计框架,用于基于过去的数据观察的未来观察。 NPI使用较低和上部概率来量化不确定性,并且仅基于少量建模假设。虽然,Copula是一种众所周知的统计概念,用于建模随机变量的依赖性。 Copula是一个联合分布函数,其边缘均均匀分布,可用于将依赖性与边际分布分开模拟。我们使用内核方法估计拷贝密度,并通过模拟研究该方法的性能。我们讨论模拟结果,以展示我们的方法如何为不同的样本大小进行,并将该方法应用于从文献中的数据集,并简要概述相关的挑战和未来研究机会。

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