Quantile regression for overdispersed count data: a hierarchical method

Peter Congdon
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引用次数: 9

Abstract

Generalized Poisson regression is commonly applied to overdispersed count data, and focused on modelling the conditional mean of the response. However, conditional mean regression models may be sensitive to response outliers and provide no information on other conditional distribution features of the response. We consider instead a hierarchical approach to quantile regression of overdispersed count data. This approach has the benefits of effective outlier detection and robust estimation in the presence of outliers, and in health applications, that quantile estimates can reflect risk factors. The technique is first illustrated with simulated overdispersed counts subject to contamination, such that estimates from conditional mean regression are adversely affected. A real application involves ambulatory care sensitive emergency admissions across 7518 English patient general practitioner (GP) practices. Predictors are GP practice deprivation, patient satisfaction with care and opening hours, and region. Impacts of deprivation are particularly important in policy terms as indicating effectiveness of efforts to reduce inequalities in care sensitive admissions. Hierarchical quantile count regression is used to develop profiles of central and extreme quantiles according to specified predictor combinations.
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过度分散计数数据的分位数回归:一种分层方法
广义泊松回归通常应用于过度分散的计数数据,并侧重于模拟响应的条件均值。然而,条件均值回归模型可能对响应异常值敏感,无法提供响应的其他条件分布特征的信息。我们考虑采用分层方法对过度分散的计数数据进行分位数回归。这种方法具有在存在异常值时有效检测异常值和稳健估计的优点,并且在卫生应用中,分位数估计可以反映风险因素。该技术首先用受污染影响的模拟过分散计数来说明,这样,条件平均回归的估计就会受到不利影响。一个真实的应用涉及门诊护理敏感急诊招生跨越7518名英国病人全科医生(GP)的做法。预测因子是全科医生执业剥夺、患者对护理和开放时间的满意度以及地区。剥夺的影响在政策方面特别重要,因为它表明减少护理敏感入院不平等现象的努力是否有效。分层分位数计数回归用于根据指定的预测器组合开发中心和极端分位数的概况。
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来源期刊
Journal of Statistical Distributions and Applications
Journal of Statistical Distributions and Applications Decision Sciences-Statistics, Probability and Uncertainty
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审稿时长
13 weeks
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