首页> 外文期刊>Economics letters >Accounting for non-response bias using participation incentives and survey design: An application using gift vouchers
【24h】

Accounting for non-response bias using participation incentives and survey design: An application using gift vouchers

机译:使用参与动机和调查设计解决无应答偏差:使用礼券的应用程序

获取原文
获取原文并翻译 | 示例
       

摘要

Standard corrections for missing data rely on the strong and generally untestable assumption of missing at random. Heckman-type selection models relax this assumption, but have been criticized because they typically require a selection variable which predicts non-response but not the outcome of interest, and can impose bivariate normality. In this paper we illustrate an application using a copula methodology which does not rely on bivariate normality. We implement this approach in data on HIV testing at a demographic surveillance site in rural South Africa which are affected by non-response. Randomized incentives are the ideal selection variable, particularly when implemented ex ante to deal with potential missing data. However, elements of survey design may also provide a credible method of correcting for non-response bias ex post. For example, although not explicitly randomized, allocation of food gift vouchers during our survey was plausibly exogenous and substantially raised participation, as did effective survey interviewers. Based on models with receipt of a voucher and interviewer identity as selection variables, our results imply that 37% of women in the population under study are HIV positive, compared to imputation-based estimates of 28%. For men, confidence intervals are too wide to reject the absence of non-response bias. Consistent results obtained when comparing different selection variables and error structures strengthen these conclusions. Our application illustrates the feasibility of the selection model approach when combined with survey metadata. (C) 2018 The Authors. Published by Elsevier B.V.
机译:缺失数据的标准校正依赖于随机缺失的强大且通常不可测试的假设。 Heckman类型的选择模型放宽了这个假设,但是由于它们通常需要选择变量来预测无响应但没有预期的结果,并且可以施加双变量正态性,因此受到批评。在本文中,我们举例说明了使用不依赖于双变量正态性的copula方法的应用。我们在南非乡村的一个人口统计学监测点的艾滋病检测数据中采用了这种方法,该数据受到无回应的影响。随机激励是理想的选择变量,尤其是事前实施以应对潜在缺失数据时。但是,调查设计的要素也可以提供一种可靠的校正事后无回应偏差的方法。例如,尽管没有明确地随机分配,但是在我们的调查过程中,食品礼品券的分配似乎是外来的,并且与有效的调查访问者一样,参与度大大提高了。根据以接受凭证和访问员身份作为选择变量的模型,我们的结果表明,在研究人群中,有37%的妇女是HIV阳性,而基于估算的估计为28%。对于男人来说,置信区间太宽,无法拒绝无应答偏差。比较不同选择变量和错误结构时获得的一致结果加强了这些结论。我们的应用程序说明了与调查元数据结合使用选择模型方法的可行性。 (C)2018作者。由Elsevier B.V.发布

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号