The Household Pulse Survey (HPS), recently released by the U.S. Census Bureau, gathers timely information about the societal and economic impacts of coronavirus. The first phase of the survey was quickly launched one month after the beginning of the coronavirus pandemic and ran for 12 weeks. To track the immediate impact of the pandemic, individual respondents during this phase were re-sampled for up to three consecutive weeks. Motivated by expected job loss during the pandemic, using public-use microdata, this work proposes unit-level, model-based estimators that incorporate longitudinal dependence at both the response and domain level. In particular, using a pseudo-likelihood, we consider a Bayesian hierarchical unit-level, model-based approach for both Gaussian and binary response data under informative sampling. To facilitate construction of these model-based estimates, we develop an efficient Gibbs sampler. An empirical simulation study is conducted to compare the proposed approach to models that do not account for unit-level longitudinal correlation. Finally, using public-use HPS micro-data, we provide an analysis of "expected job loss" that compares both design-based and model-based estimators and demonstrates superior performance for the proposed model-based approaches.
翻译:家庭脉冲调查(HPS)是美国人口普查局最近发布的一个调查,用于收集关于冠状病毒的社会和经济影响的及时信息。该调查的第一阶段在冠状病毒流行开始一个月后迅速启动,为期12周。为了追踪大流行的直接影响,该阶段的个体受访者被重新抽样进行了多达三个连续星期的调查。本文以预测疫情期间的失业率为目标,利用公共微观数据,提出了单元级别的基于模型的估计方法,该方法在响应和领域级别上都考虑了长期依赖关系。具体而言,使用假似然函数,我们考虑了一个基于贝叶斯层次单元的,针对正态分布和二元响应数据以信息采样法为基础的方法,以简化构建这些基于模型的估计的过程,我们开发了一种有效的Gibbs取样器。通过经验模拟研究,比较了所提出的方法和不考虑单元级别纵向相关性的模型。最后,我们使用公共微数据提供了一份"失业率预测"的分析,比较了基于设计和模型的估计方法,并展示了所提出的基于模型的方法的卓越性能。