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Examining the Relationship Between Nonresponse Propensity and Data Quality in Two National Household Surveys

机译:在两次全国住户调查中检验无应答倾向与数据质量之间的关系

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摘要

Important theoretical questions in survey research over the past 50 years have been: How does bringing in late or reluctant respondents affect total survey error? Does the effort and expense of obtaining interviews from difficult-to-contact or reluctant respondents significantly decrease the nonresponse error of survey estimates? Or do these late respondents introduce enough measurement error to offset any reductions in nonresponse bias? This study attempts to address these questions by examining nonresponse and data quality in two national household surveys: the Current Population Survey (CPS) and the American Time Use Survey (ATUS). Response propensity models were developed for each survey, and data quality in each survey was assessed by a variety of indirect indicators of response error, for example, item-missing-data rates, round value reports, and interview-reinterview response inconsistencies. The principal analyses investigated the relationship between response propensity and the data-quality indicators in each survey, and examined the effects of potential common causal factors when there was evidence of covariation. Although the strength of the relationship varied by indicator and survey, data quality decreased for some indicators as the probability of nonresponse increased. Therefore, the direct implication for survey managers is that efforts to reduce nonresponse can lead to poorer-quality data. Moreover, these effects remain even after attempts to control for potential common causal factors.
机译:过去50年中,调查研究中的重要理论问题是:引入迟到或不愿接受的调查对象如何影响总调查误差?从难以联系或不情愿的受访者那里获取访​​谈的工作和费用是否显着减少了调查估计数的无答复误差?还是这些迟来的受访者引入了足够的测量误差以抵消无响应偏差的减少?本研究试图通过检查两项全国家庭调查(当前人口调查(CPS)和美国时间使用调查(ATUS))中的无答复和数据质量来解决这些问题。针对每个调查开发了响应倾向模型,并且通过各种间接的响应误差指标来评估每个调查的数据质量,例如,项目缺失数据率,舍入价值报告以及访谈-再访响应不一致。委托人分析调查了每次调查中答复倾向与数据质量指标之间的关系,并在有协变证据时检查了潜在的常见因果关系的影响。尽管这种关系的强度因指标和调查而异,但随着无响应概率的增加,某些指标的数据质量下降。因此,对调查管理人员的直接影响是,减少不答复的努力可能导致数据质量较差。而且,即使试图控制潜在的常见因果关系,这些影响仍然存在。

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  • 来源
    《Public Opinion Quarterly》 |2010年第5期|p.934-955|共22页
  • 作者

    Scott Fricker;

  • 作者单位

    Address correspondence to Scott Fricker, U.S. Bureau of Labor Statistics, 2 Massachusetts Ave. NE, Room 1950, Washington, DC 20212, USA;

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  • 正文语种 eng
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