Nonresponse arises frequently in surveys and follow-ups are routinely made to increase the response rate. In order to monitor the follow-up process, callback data have been used in social sciences and survey studies for decades. In modern surveys, the availability of callback data is increasing because the response rate is decreasing and follow-ups are essential to collect maximum information. Although callback data are helpful to reduce the bias in surveys, such data have not been widely used in statistical analysis until recently. We propose a stableness of resistance assumption for nonresponse adjustment with callback data. We establish the identification and the semiparametric efficiency theory under this assumption, and propose a suite of semiparametric estimation methods including a doubly robust one, which generalize existing parametric approaches for callback data analysis. We apply the approach to a Consumer Expenditure Survey dataset. The results suggest an association between nonresponse and high housing expenditures.
翻译:为了监测后续行动进程,几十年来社会科学和调查研究都采用了回调数据。在现代调查中,回调数据的提供量不断增加,因为回调率下降,而后续数据对收集最大信息至关重要。虽然回调数据有助于减少调查中的偏差,但这些数据直到最近才在统计分析中广泛使用。我们建议了对不回调数据进行调整的抵制性假设的稳定性。我们在这一假设下确定了识别和半对称效率理论,并提出了一套半对称估计方法,包括一个双对称方法,其中概括了回调数据分析的现有参数方法。我们对消费者支出调查数据集采用了这种方法。结果显示,不回调与高住房支出之间有联系。