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Marginal Projected Multivariate Linear Models for Clustered Angular Data

机译:聚类角数据的边际投影多元线性模型

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Among the diverse frameworks that have been proposed for regression analysis of angular data, the projected multivariate linear model provides a particularly appealing and tractable methodology. In this model, the observed directional responses are assumed to correspond to the angles formed by latent bivariate normal random vectors that are assumed to depend upon covariates through a linear model. This implies an angular normal distribution for the observed angles, and incorporates a regression structure through a familiar and convenient relationship. In this paper we extend this methodology to accommodate clustered data (e.g., longitudinal or repeated measures data) by formulating a marginal version of the model and basing estimation on an EM-like algorithm in which correlation among within-cluster responses is taken into account by incorporating a working correlation matrix into the M step. A sandwich estimator is used for the parameter estimates' covariance matrix. The methodology is motivated and illustrated using an example involving clustered measurements of microbril angle on loblolly pine (Pinus taeda L.) Simulation studies are presented that evaluate the finite sample properties of the proposed fitting method. In addition, the relationship between within-cluster correlation on the latent Euclidean vectors and the corresponding correlation structure for the observed angles is explored.
机译:在已提出的用于角度数据回归分析的各种框架中,投影多元线性模型提供了一种特别有吸引力且易于处理的方法。在该模型中,假定观察到的方向响应与由潜在的双变量法向随机矢量形成的角度相对应,该值由线性模型假定为依赖于协变量。这意味着观察到的角度呈正态分布,并通过熟悉且方便的关系合并了回归结构。在本文中,我们通过制定模型的边际版本并基于类似于EM的算法(其中考虑了群内响应之间的相关性)的估计,扩展了该方法以适应聚类数据(例如,纵向或重复测量数据)。将工作相关矩阵合并到M步骤中。三明治估计器用于参数估计的协方差矩阵。该方法的动机是通过一个示例进行的,该示例涉及对火炬松(Pinus taeda L.)的微烤砖角的聚类测量。提出了模拟研究,评估了拟议拟合方法的有限样本属性。此外,还探讨了潜在欧几里得向量上的簇内相关性与所观察角度的相应相关性结构之间的关系。

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