针对依赖性连续正数据的灵活准贝塔质回归模型

Pub Date : 2024-07-19 DOI:10.4310/22-sii762
João Freitas, Juvêncio Nobre, Caio Azevedo
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引用次数: 0

摘要

在许多令人感兴趣的情况下,经常会观察到同一受试者在几种评估条件下测得的正反应。通常,这种情况意味着反应分布呈正偏斜,同时存在受试者内部依赖性。众所周知,忽略这些特征会导致误导性推断。在本文中,我们扩展了贝塔质数回归模型,用于对非对称正向数据建模,同时考虑了依赖结构。我们考虑了一个有用的预测因子,用于对均值的适当变换以及同质协方差结构进行建模。所提出的模型是灵活的特威迪回归模型(包括伽马分布和反高斯分布)的一个有趣的竞争对手。此外,还提出了残差分析和影响诊断工具。我们进行了蒙特卡罗实验,以评估所提方法在小样本量和中等样本量下的性能,并进行了适当的讨论。通过分析一个真实的纵向数据集,对该方法进行了说明。本文还开发了一个 R 软件包,使从业人员能够使用本文所述的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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Flexible quasi-beta prime regression models for dependent continuous positive data
In many situations of interest, it is common to observe positive responses measured along several assessment conditions, within the same subjects. Usually, such a scenario implies a positive skewness on the response distributions, along with the existence of within-subject dependency. It is known that neglecting these features can lead to a misleading inference. In this paper we extend the beta prime regression model for modeling asymmetric positive data, while taking into account the dependence structure. We consider a useful predictor for modeling a suitable transformation of the mean, along with homogeneous covariance structure. The proposed model is an interesting competitor of the flexible Tweedie regression models, which include distributions such as Gamma and Inverse Gaussian. Furthermore, residual analysis and influence diagnostic tools are proposed. A Monte Carlo experiment is conducted to evaluate the performance of the proposed methodology, under small and moderate sample sizes, along with suitable discussions. The methodology is illustrated with the analysis of a real longitudinal dataset. An R package was developed to allow the practitioners to use the methodology described in this paper.
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