首页> 外文会议>International Workshop on Statistical Modelling >Measuring noncompliance in insurance benefit regulations with randomized response methods for multiple items
【24h】

Measuring noncompliance in insurance benefit regulations with randomized response methods for multiple items

机译:用多个项目的随机响应方法测量保险福利法规的不合规

获取原文

摘要

Randomized response (RR) is a well known method for measuring sensitive behavior. Yet it is not often applied. Two possible reasons for this are (ⅰ) its lower efficiency and the resulting need for larger sample sizes, making applications of RR expensive, (ⅱ) the notion that in many applications the RR design may not be followed by every respondent ('cheating'). This paper addresses the efficiency problem by proposing item response theory (IRT) 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 yields a more efficient and powerful analysis of individual differences than available from univariate RR data. Cheating in a RR study is approached by introducing additional mixture components in the IRT models with one component consisting of respondents who answer truthfully and other components consisting of respondents who do not provide truthful responses to all or a subset of the items. The resulting IRT model is applied to data from a Dutch survey conducted under receivers of disablement insurance benefit (DIB) who are interviewed about their compliance behavior to rules that are a prerequisite for receiving DIB.
机译:随机响应(RR)是用于测量敏感行为的众所周知的方法。然而,它不会经常应用。这两种可能的原因是(Ⅰ)效率较低,结果需要更大的样本尺寸,使得RR昂贵的应用昂贵,(Ⅱ)在许多应用中,RR设计可能不会被每个受访者接下来('作弊' )。本文通过提出项目响应理论(IRT)模型来解决用于分析多变量RR数据的效率问题。在这些模型中,基于研究中的敏感行为的多种测量来估计一个人参数,其产生比单变量RR数据的个人差异更有效和强大的分析。通过在IRT模型中引入额外的混合组件,通过一个组成部分,其中一个组成部分,包括应对的受访者以及由不提供物品的所有或者项目的子集的受访者组成的受访者组成的一个组成部分来接近欺诈学习。由此产生的IRT模型应用于根据禁用保险福利(DIB)的荷兰调查的数据,他们受访其对符合行为的规则,这是接收DIB的先决条件。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号