This paper establishes asymptotic results for the maximum likelihood and restricted maximum likelihood (REML) estimators of the parameters in the nested error regression model for clustered data when both of the number of independent clusters and the cluster sizes (the number of observations in each cluster) go to infinity. Under very mild conditions, the estimators are shown to be asymptotically normal with an elegantly structured covariance matrix. There are no restrictions on the rate at which the cluster size tends to infinity but it turns out that we need to treat within cluster parameters (i.e. coefficients of unit-level covariates that vary within clusters and the within cluster variance) differently from between cluster parameters (i.e. coefficients of cluster-level covariates that are constant within clusters and the between cluster variance) because they require different normalisations and are asymptotically independent.
翻译:本文确定了当独立组群的数量和组群大小(每个组群的观测次数)达到无穷无尽时,组群数据嵌入错误回归模型中参数的最大可能性和限制最大可能性(REML)的测算结果。在非常温和的条件下,估计值以结构优异的共变矩阵显示为无穷常。对于组群大小倾向于无限的速率没有限制,但结果显示我们需要在组群参数(即组群内部和组群内部差异不同的单位级共变系数)内处理,与组群参数(即集群内和组群差异之间不变的组群级共变系数)之间的差异不同,因为它们需要不同的正常度,并且具有相同的独立性。