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Cumulative logit - Poisson and cumulative logit - negative binomial compound regression models for count data.

机译:用于计数数据的累积logit-泊松和累积logit-负二项式复合回归模型。

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摘要

Count data arise in many settings and often can be analyzed by Poisson regression, with covariates predicting each individual's true mean rate. The mean rate times the length of exposure completely specifies the Poisson probability of every possible count. To handle various complications that arise in practice, many adaptations to this basic structure have been devised. For example, the observed probability of a zero count may diverge from the Poisson. Often, more zeroes occur than the Poisson predicts, but sometimes fewer occur. Models that handle these deviations are well developed and are frequently applied. These include the zero inflated Poisson (ZIP), zero altered Poisson (ZAP), Poisson hurdle (PH) and others. In other cases, the Poisson underpredicts the true variance, but negative binomial (NB) regression that generalizes the Poisson resolves this. Adaptations for zero counts work similarly, yielding analogous acronyms ZINB, NBH, etc.; In yet other cases, data may behave like Poisson or NB but significant deviations extend slightly beyond zero. The literature apparently offers only two such adaptations of Poisson regression (namely, alterations for two counts; Silva and Covas, 2000; Melkersson and Rooth, 2000). Neither provides parsimonious generalizations for alterations at multiple counts.; This dissertation combines a proportional odds ordinal regression for the lowest counts with a conditionally Poisson or NB structure for all higher counts. This offers flexibility while permitting parsimony and interpretability. The model parameters are estimated by maximum likelihood, given a specified point of transition from proportional odds to Poisson or NB. The transition point may be determined by prior knowledge, by analysis goals or by exploratory fitting. Exposure time is incorporated in both the lower and upper parts. Parameter estimates are shown to be asymptotically normal, justifying use of likelihood based chi square statistics. The expectation and variance are computed, yielding measures of influence and of general over- or underdispersion. A Pearson type goodness of fit test is available.; The model is fit to a well studied dataset of episodes of severe hypoglycemia (Lachin, 2000, among others), illustrating its potential. Advantages, limitations and areas for potential future research are described.
机译:计数数据出现在许多情况下,通常可以通过泊松回归进行分析,协变量可以预测每个人的真实平均比率。平均比率乘以暴露时间的长度完全确定了每个可能计数的泊松概率。为了处理实践中出现的各种复杂情况,已经设计出对该基本结构的许多改编。例如,观察到的零计数的概率可能与泊松分叉。通常,零发生的次数超过了Poisson的预测,但有时发生的次数更少。处理这些偏差的模型已经很好地开发并经常使用。其中包括零膨胀泊松(ZIP),零变泊松(ZAP),泊松跨栏(PH)等。在其他情况下,泊松会低估真实的方差,但是推广泊松的负二项式(NB)回归可以解决这一问题。零计数的调整工作类似,产生类似的缩写ZINB,NBH等。在其他情况下,数据的行为可能类似于Poisson或NB,但是明显的偏差会稍微超过零。显然,文献仅提供了Poisson回归的两种这样的改编(即,两次计数的变更; Silva和Covas,2000; Melkersson和Rooth,2000)。二者均未提供针对多种计数的简化的概括。本论文将最低计数的比例奇数序数回归与所有较高计数的条件泊松或NB结构相结合。这在允许简约和可解释性的同时提供了灵活性。给定从比例赔率到Poisson或NB的特定过渡点,通过最大似然估计模型参数。过渡点可以通过先验知识,分析目标或探索性拟合来确定。下部和上部都有曝光时间。参数估计值显示为渐近正态,证明使用基于似然的卡方统计量是合理的。计算期望值和方差,得出影响力以及总体过度或不充分分散的度量。提供皮尔逊式拟合优度测试。该模型适合于研究充分的严重低血糖发作的数据集(Lachin,2000等),说明了其潜力。描述了潜在的未来研究的优势,局限性和领域。

著录项

  • 作者

    VanRaden, Mark Joseph.;

  • 作者单位

    The George Washington University.$bStatistics.;

  • 授予单位 The George Washington University.$bStatistics.;
  • 学科 Biology Biostatistics.; Statistics.
  • 学位 Ph.D.
  • 年度 2008
  • 页码 189 p.
  • 总页数 189
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 生物数学方法;统计学;
  • 关键词

  • 入库时间 2022-08-17 11:38:48

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