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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >Two likelihood-based semiparametric estimation methods for panel count data with covariates
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Two likelihood-based semiparametric estimation methods for panel count data with covariates

机译:带有协变量的面板计数数据的两种基于似然的半参数估计方法

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摘要

We consider estimation in a particular semiparametric regression model for the mean of a counting process with "panel count" data. The basic model assumption is that the conditional mean function of the counting process is of the form E{N(t)vertical bar Z} = exp(beta(T)(0)Z)Lambda(0)(t) where Z is a vector of covariates and Lambda(0) is the baseline mean function. The "panel count" observation scheme involves observation of the counting process N for an individual at a random number K of random time points; both the number and the locations of these time points may differ across individuals. We study semiparametric maximum pseudo-likelihood and maximum likelihood estimators of the unknown parameters (beta(0), Lambda(0)) derived on the basis of a nonhomogeneous Poisson process assumption. The pseudo-likelihood estimator is fairly easy to compute, while the maximum likelihood estimator poses more challenges from the computational perspective. We study asymptotic properties of both estimators assuming that the proportional mean model holds, but dropping the Poisson process assumption used to derive the estimators. In particular we establish asymptotic normality for the estimators of the regression parameter beta(0) under appropriate hypotheses. The results show that our estimation procedures are robust in the sense that the estimators converge to the truth regardless of the underlying counting process.
机译:我们考虑在特定的半参数回归模型中对具有“面板计数”数据的计数过程的平均值进行估计。基本模型假设是,计数过程的条件均值函数形式为E {N(t)竖线Z} = exp(beta(T)(0)Z)Lambda(0)(t),其中Z为协变量的向量,Lambda(0)是基线均值函数。 “面板计数”观察方案涉及在随机数K的随机时间点观察个体的计数过程N;这些时间点的数量和位置可能因人而异。我们研究基于非均匀泊松过程假设的未知参数(beta(0),Lambda(0))的半参数最大拟似然性和最大似然估计。伪似然估计器很容易计算,而最大似然估计器从计算角度提出了更多挑战。我们假设比例均值模型成立,但研究了两个估计量的渐近性质,但放弃了用于推导估计量的泊松过程假设。特别是,在适当的假设下,我们为回归参数beta(0)的估计量建立了渐近正态性。结果表明,在不考虑基础计数过程的前提下,估计器收敛于事实的意义上,我们的估计程序是可靠的。

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