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首页> 外文期刊>Journal of the American statistical association >Generalized Gaussian Process Regression Model for Non-Gaussian Functional Data
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Generalized Gaussian Process Regression Model for Non-Gaussian Functional Data

机译:非高斯函数数据的广义高斯过程回归模型

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摘要

In this article, we propose a generalized Gaussian process concurrent regression model for functional data, where the functional response variable has a binomial, Poisson, or other non-Gaussian distribution from an exponential family, while the covariates are mixed functional and scalar variables. The proposed model offers a nonparametric generalized concurrent regression method for functional data with multidimensional covariates, and provides a natural framework on modeling common mean structure and covariance structure simultaneously for repeatedly observed functional data. The mean structure provides overall information about the observations, while the covariance structure can be used to catch up the characteristic of each individual batch. The prior specification of covariance kernel enables us to accommodate a wide class of nonlinear models. The definition of the model, the inference, and the implementation as well as its asymptotic properties are discussed. Several numerical examples with different non-Gaussian response variables are presented. Some technical details and more numerical examples as well as an extension of the model are provided as supplementary materials.
机译:在本文中,我们为功能数据提出了一个广义的高斯过程并发回归模型,其中功能响应变量具有指数族的二项式,泊松或其他非高斯分布,而协变量是功能和标量的混合变量。所提出的模型为具有多维协变量的功能数据提供了一种非参数的广义并发回归方法,并为重复观测的功能数据同时建模共同均值结构和协方差结构提供了一个自然的框架。均值结构可提供有关观测值的整体信息,而协方差结构可用于捕获每个批次的特征。协方差内核的现有规范使我们能够适应各种非线性模型。讨论了模型的定义,推论,实现及其渐近性质。给出了几个具有不同非高斯响应变量的数值示例。提供一些技术细节和更多的数值示例,以及模型的扩展作为补充材料。

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