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Anchoring vignettes with sample selection due to non-response

机译:由于无响应,通过样本选择来固定渐晕

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Summary. Anchoring vignettes are a powerful tool for enhancing self-reported data comparability across countries or socio-economic groups, since they may correct for differential item functioning, i.e. the individual heterogeneity in the interpretation of the survey questions. The parametric solution of this approach is called the compound hierarchical ordinal probit (CHO-PIT) model. Since vignettes are particular versions of questionnaires, their collection can suffer from sample selection bias due to non-response. We extend the CHOPIT model to account for this problem. This extension is, however, complicated by the fact that the variable of interest is ordinal, so the procedures that are adopted in the case of a strictly continuous outcome are no longer applicable and the maximum likelihood approach is therefore the suggested solution. The extended model is then applied to investigate and compare across countries the effects of differential item functioning and sample selection on the response scale differences in the self-reported work disability vignettes that were collected in the Survey of Health, Ageing and Retirement in Europe. When the collected vignette rate is high, the bias that is induced by the selection mechanism on the CHOPIT estimates is negligible. When the collected vignette rate is low, sample selection affects the model estimates, leading to a reversing of the directions of some differential item functioning corrections provided by the standard CHOPIT model.
机译:摘要。固定小插曲是增强国家或社会经济群体之间自我报告数据可比性的有力工具,因为它们可以纠正差异项的功能,即,在解释调查问题时的个体异质性。这种方法的参数化解决方案称为复合层次序数概率(CHO-PIT)模型。由于小插图是问卷的特定版本,因此,由于无回应,其收集可能会遭受样本选择偏见的困扰。我们扩展了CHOPIT模型来解决此问题。但是,由于关注变量是序数这一事实而使此扩展变得复杂,因此在严格连续结果的情况下所采用的过程不再适用,因此建议采用最大似然方法。然后,将扩展模型应用于调查和比较不同国家/地区的项目功能和样本选择对自测健康,衰老和退休调查中收集的自我报告的工作障碍短片的回应量表差异的影响。当收集的小插图率很高时,由选择机制对CHOPIT估计值引起的偏差可以忽略不计。当所收集的小插图率较低时,样本选择会影响模型估计,从而导致标准CHOPIT模型提供的某些差异项功能更正的方向相反。

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