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Influence diagnostics for censored regression models with autoregressive errors

机译:具有自回归误差的删失回归模型的影响诊断

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Observations collected over time are often autocorrelated rather than independent, and sometimes include observations below or above detection limits (i.e. censored values reported as less or more than a level of detection) and/or missing data. Practitioners commonly disregard censored data cases or replace these observations with some function of the limit of detection, which often results in biased estimates. Moreover, parameter estimation can be greatly affected by the presence of influential observations in the data. In this paper we derive local influence diagnostic measures for censored regression models with autoregressive errors of order p (hereafter, AR(p)-CR models) on the basis of the Q-function under three useful perturbation schemes. In order to account for censoring in a likelihood-based estimation procedure for AR(p)-CR models, we used a stochastic approximation version of the expectation-maximisation algorithm. The accuracy of the local influence diagnostic measure in detecting influential observations is explored through the analysis of empirical studies. The proposed methods are illustrated using data, from a study of total phosphorus concentration, that contain left-censored observations. These methods are implemented in the sans-serifR/sans-serif package ARCensReg.
机译:随时间推移收集的观察值通常是自相关的,而不是独立的,有时包括低于或高于检测极限(即报告的检测值小于或高于检测水平)和/或缺少数据的观测值。从业者通常无视被检查的数据案例,或者将这些观察结果替换为检测限的某些功能,这通常会导致估计偏差。此外,数据中存在有影响的观测值会极大地影响参数估计。在本文中,我们基于三种有用扰动方案下的Q函数,针对具有p阶自回归误差的删失回归模型(以下称为AR(p)-CR模型)推导了局部影响诊断方法。为了考虑在AR(p)-CR模型的基于似然估计过程中的删失,我们使用了期望最大化算法的随机近似版本。通过对实证研究的分析,探索了局部影响诊断措施在检测有影响力的观测结果中的准确性。使用总磷浓度研究中的数据对提出的方法进行了说明,这些数据包含左删失的观测值。这些方法在 R 包ARCensReg中实现。

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