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Identification of partial falsifications in survey data

机译:识别调查数据中的部分伪造

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摘要

Survey data allow constructing indicators, which differ for real and falsified interviews. It could be shown in previous research that applying cluster analysis to a set of indicators helps to identify potential falsifications at the interviewer level. The current work analyzes to what extent a differentiation remains feasible when interviewers falsify only a part of their interviews. An experimental dataset containing both real and falsified data for each respondent allows to construct bootstrap samples with the required properties, i.e., a predefined share of falsified interviews for those interviewers doing (partial) falsifications. The bootstrap approach allows measuring how robust the method works when the share of falsified interviews per interviewer decreases while taking into account also other relevant factors such as the total number of interviews per interviewer, the share of falsifiers, and the number of interviewers. The presented results demonstrate that the method loses power with decreasing share of falsifications, but remains a valuable tool for ensuring high data quality in surveys.
机译:调查数据允许构建指标,这对于真实和伪造的采访而言是不同的。在先前的研究中可以证明,将聚类分析应用于一组指标有助于识别访调员级别的潜在证伪。当前的工作分析了当访调员伪造他们的一部分面试时,在何种程度上仍可进行区分。一个包含每个受访者真实数据和伪造数据的实验数据集,可以构造具有所需属性的引导样本,即为那些(部分)伪造的访问员提供伪造面试的预定义份额。引导程序方法可以衡量当每个访问者的虚假访问量减少时该方法的有效性,同时还要考虑其他相关因素,例如每个访问者的访问总数,伪造者的比例和访问者的数量。提出的结果表明,该方法随着伪造份额的减少而丧失了功能,但仍然是确保调查中的高质量数据的有价值的工具。

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