Responsive Survey Design (RSD) aims to increase the efficiency of survey data collection via live monitoring of paradata and the introduction of protocol changes when survey errors and increased costs seem imminent. Daily predictions of response propensity for all active sampled cases are among the most important quantities for live monitoring of data collection outcomes, making sound predictions of these propensities essential for the success of RSD. Because it relies on real-time updates of prior beliefs about key design quantities, such as predicted response propensities, RSD stands to benefit from Bayesian approaches. However, empirical evidence of the merits of these approaches is lacking in the literature, and the derivation of informative prior distributions is required for these approaches to be effective. In this paper, we evaluate the ability of two approaches to deriving prior distributions for the coefficients defining daily response propensity models to improve predictions of daily response propensity in a real data collection employing RSD. The first approach involves analyses of historical data from the same survey, and the second approach involves literature review. We find that Bayesian methods based on these two approaches result in higher-quality predictions of response propensity than more standard approaches ignoring prior information. This is especially true during the early-to-middle periods of data collection when interventions are often considered in an RSD framework.
翻译:应对性调查设计(RSD)旨在通过对准数据的实时监测提高调查数据收集的效率,并在调查错误和成本增加似乎迫在眉睫时采用协议变化; 对所有积极抽样案例的反应倾向的每日预测是现场监测数据收集结果的最重要数量,对此类倾向的正确预测对于难民身份确定的成功至关重要; 因为它依赖于对关键设计数量,如预测反应倾向等先前信念的实时更新,难民身份确定将受益于巴耶斯方法; 然而,文献中缺乏关于这些方法的优点的经验证据,因此,要使这些方法行之有效,需要事先对信息发布作出知情的预测; 在本文中,我们评估了两种办法的能力,即事先为界定日反应倾向模型的系数进行分配,以改进对真实数据收集中日常反应倾向的预测; 第一种办法涉及对同一调查的历史数据进行分析,而第二种办法则涉及文献审查。