In survey sampling, survey data do not necessarily represent the target population, and the samples are often biased. However, information on the survey weights aids in the elimination of selection bias. The Horvitz-Thompson estimator is a well-known unbiased, consistent, and asymptotically normal estimator; however, it is not efficient. Thus, this study derives the semiparametric efficiency bound for various target parameters by considering the survey weight as a random variable and consequently proposes a semiparametric optimal estimator with certain working models on the survey weights. The proposed estimator is consistent, asymptotically normal, and efficient in a class of the regular and asymptotically linear estimators. Further, a limited simulation study is conducted to investigate the finite sample performance of the proposed method. The proposed method is applied to the 1999 Canadian Workplace and Employee Survey data.
翻译:在抽样调查中,调查数据不一定代表目标人口,抽样往往有偏差,然而,关于调查权重的资料有助于消除选择偏差,Horvitz-Thompson估计仪是一个众所周知的不偏袒、一贯和无症状的正常估计仪;然而,它效率不高,因此,通过将调查权重视为随机变量,得出了与不同目标参数结合的半对称效率,因此,建议采用半对称最佳估计仪,与调查权重的某些工作模型一起计算,拟议的估计仪在正常和无症状线性估计仪的类别中是一致的,是正常的,也是有效的,此外,进行了有限的模拟研究,以调查拟议方法的有限抽样性能,拟议方法适用于1999年加拿大工作场所和雇员调查数据。