Department of Marketing (Room 3.201), Warwick Business School, University of Warwick, Scarman Road, Coventry, CV4 7AL, UK.
Erasmus University Rotterdam, Rotterdam, The Netherlands.
Psychometrika. 2024 Sep;89(3):1007-1033. doi: 10.1007/s11336-024-09976-3. Epub 2024 May 28.
When surveys contain direct questions about sensitive topics, participants may not provide their true answers. Indirect question techniques incentivize truthful answers by concealing participants' responses in various ways. The Crosswise Model aims to do this by pairing a sensitive target item with a non-sensitive baseline item, and only asking participants to indicate whether their responses to the two items are the same or different. Selection of the baseline item is crucial to guarantee participants' perceived and actual privacy and to enable reliable estimates of the sensitive trait. This research makes the following contributions. First, it describes an integrated methodology to select the baseline item, based on conceptual and statistical considerations. The resulting methodology distinguishes four statistical models. Second, it proposes novel Bayesian estimation methods to implement these models. Third, it shows that the new models introduced here improve efficiency over common applications of the Crosswise Model and may relax the required statistical assumptions. These three contributions facilitate applying the methodology in a variety of settings. An empirical application on attitudes toward LGBT issues shows the potential of the Crosswise Model. An interactive app, Python and MATLAB codes support broader adoption of the model.
当调查包含关于敏感主题的直接问题时,参与者可能不会提供真实答案。间接问题技术通过以各种方式隐藏参与者的回答来激励真实答案。Crosswise 模型旨在通过将敏感目标项目与非敏感基线项目配对,并仅要求参与者指示他们对两个项目的回答是否相同或不同来实现这一点。基线项目的选择对于保证参与者的感知和实际隐私以及对敏感特征进行可靠估计至关重要。本研究做出了以下贡献。首先,它描述了一种基于概念和统计考虑的综合方法来选择基线项目。由此产生的方法区分了四个统计模型。其次,它提出了新的贝叶斯估计方法来实现这些模型。第三,它表明,这里介绍的新模型提高了 Crosswise 模型的常见应用的效率,并可能放宽所需的统计假设。这三个贡献有助于在各种环境中应用该方法。对 LGBT 问题态度的实证应用表明了 Crosswise 模型的潜力。一个交互式应用程序、Python 和 MATLAB 代码支持更广泛地采用该模型。