We consider an empirical likelihood framework for inference for a statistical model based on an informative sampling design and population-level information. The population-level information is summarized in the form of estimating equations and incorporated into the inference through additional constraints. Covariate information is incorporated both through the weights and the estimating equations. The estimator is based on conditional weights. We show that under usual conditions, with population size increasing unbounded, the estimates are strongly consistent, asymptotically unbiased, and normally distributed. Moreover, they are more efficient than other probability-weighted analogs. Our framework provides additional justification for inverse probability weighted score estimators in terms of conditional empirical likelihood. We give an application to demographic hazard modeling by combining birth registration data with panel survey data to estimate annual first birth probabilities.
翻译:我们认为,根据信息丰富的抽样设计和人口水平信息,统计模型的推论经验可能性框架; 人口水平信息以估计方程式的形式汇总,并通过额外的限制纳入推论; 共同信息通过加权和估计方程式纳入; 估计方程式以有条件的加权为基础; 我们表明,在通常情况下,随着人口规模的扩大而无限制,估计非常一致,没有偏见,而且通常分布; 此外,它们比其他概率加权类比更有效; 我们的框架为反概率加权得分估算者提供了附加理由,说明在有条件的经验可能性方面采用反概率加权得分估算者; 我们将出生登记数据与小组调查数据结合起来,以估计首次出生的年概率,从而应用人口危害模型。