Bradley et al. (arXiv:2106.05818v2), as part of an analysis of the performance of large-but-biased surveys during the COVID-19 pandemic, argue that the data defect correlation provides a useful tool to quantify the effects of sampling bias on survey results. We examine their analyses of results from the COVID-19 Trends and Impact Survey (CTIS) and show that, despite their claims, CTIS in fact performs well for its intended goals. Our examination reveals several limitations in the data defect correlation framework, including that it is only applicable for a single goal (population point estimation) and that it does not admit the possibility of measurement error. Through examples, we show that these limitations seriously affect the applicability of the framework for analyzing CTIS results. Through our own alternative analyses, we arrive at different conclusions, and we argue for a more expansive view of survey quality that accounts for the intended uses of the data and all sources of error, in line with the Total Survey Error framework that have been widely studied and implemented by survey methodologists.
翻译:Bradley等人(arXiv:2106.05818v2)分析COVID-19大流行期间大型但有偏见调查的绩效,作为分析该大流行期间的绩效的一部分,数据缺陷相关关系为量化抽样偏差对调查结果的影响提供了有用的工具,我们审查了它们对COVID-19趋势和影响调查(CTIS)结果的分析,并表明,尽管CTIS声称,但它们实际上达到了预定目标,但它实际上还是取得了良好的效果。我们的审查表明数据缺陷相关框架存在若干局限性,包括它只适用于单一目标(人口点估计),而且它不承认测量错误的可能性。我们通过实例表明,这些局限性严重影响了分析CTIS结果的框架的适用性。我们通过自己的替代分析得出不同的结论,我们主张根据调查方法学家广泛研究和实施的 " 全面调查错误框架 ",对调查质量进行更广泛的分析,说明数据和所有误差源的预期用途。