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Item Randomized-Response Models for Measuring Noncompliance: Risk-Return Perceptions, Social Influences, and Self-Protective Responses

机译:衡量违规的项目随机响应模型:风险回报感知,社会影响和自我保护响应

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摘要

Randomized response (RR) is a well-known method for measuring sensitive behavior. Yet this method is not often applied because: (i) of its lower efficiency and the resulting need for larger sample sizes which make applications of RR costly; (ii) despite its privacy-protection mechanism the RR design may not be followed by every respondent; and (iii) the incorrect belief that RR yields estimates only of aggregate-level behavior but that these estimates cannot be linked to individual-level covariates. This paper addresses the efficiency problem by applying item randomized-response (IRR) models for the analysis of multivariate RR data. In these models, a person parameter is estimated based on multiple measures of a sensitive behavior under study which allow for more powerful analyses of individual differences than available from univariate RR data. Response behavior that does not follow the RR design is approached by introducing mixture components in the IRR models with one component consisting of respondents who answer truthfully and another component consisting of respondents who do not provide truthful responses. An analysis of data from two large-scale Dutch surveys conducted among recipients of invalidity insurance benefits shows that the willingness of a respondent to answer truthfully is related to the educational level of the respondents and the perceived clarity of the instructions. A person is more willing to comply when the expected benefits of noncompliance are minor and social control is strong.
机译:随机响应(RR)是一种用于衡量敏感行为的众所周知的方法。然而,这种方法并不经常使用,原因是:(i)效率较低,因此需要更大的样本量,这使RR的应用成本很高; (ii)尽管采用了隐私保护机制,但并非每个受访者都会遵循RR设计; (iii)错误地认为RR只能得出总体水平行为的估计,但是这些估计不能与个人水平的协变量联系起来。本文通过应用项目随机响应(IRR)模型分析多元RR数据来解决效率问题。在这些模型中,人的参数是基于对研究中的敏感行为的多种度量来估算的,与单变量RR数据相比,该方法可以对个人差异进行更有效的分析。通过在IRR模型中引入混合成分来处理不遵循RR设计的响应行为,其中一个组成部分由真实回答的受访者组成,另一部分由不提供真实响应的受访者组成。对来自两次在荷兰无效保险受益人中进行的大规模调查的数据进行的分析表明,受访者如实回答的意愿与受访者的教育程度和指示的明晰度有关。当违规的预期收益很小且社会控制力很强时,一个人更愿意遵守。

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