A data-driven approach to monitoring data collection in an online panel

IF 1.2 4区 社会学 Q4 PUBLIC, ENVIRONMENTAL & OCCUPATIONAL HEALTH Longitudinal and Life Course Studies Pub Date : 2019-10-01 DOI:10.1332/175795919x15694136006114
J. Herzing, C. Vandenplas, Julian B. Axenfeld
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引用次数: 1

Abstract

Longitudinal or panel surveys suffer from panel attrition which may result in biased estimates. Online panels are no exceptions to this phenomenon, but offer great possibilities in monitoring and managing the data-collection phase and response-enhancement features (such as reminders), due to real-time availability of paradata. This paper presents a data-driven approach to monitor the data-collection phase and to inform the adjustment of response-enhancement features during data collection across online panel waves, which takes into account the characteristics of an ongoing panel wave. For this purpose, we study the evolution of the daily response proportion in each wave of a probability-based online panel. Using multilevel models, we predict the data-collection evolution per wave day. In our example, the functional form of the data-collection evolution is quintic. The characteristics affecting the shape of the data-collection evolution are those of the specific wave day and not of the panel wave itself. In addition, we simulate the monitoring of the daily response proportion of one panel wave and find that the timing of sending reminders could be adjusted after 20 consecutive panel waves to keep the data-collection phase efficient. Our results demonstrate the importance of re-evaluating the characteristics of the data-collection phase, such as the timing of reminders, across the lifetime of an online panel to keep the fieldwork efficient.
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一种数据驱动的方法,用于监控在线面板中的数据收集
纵向或小组调查受到小组人员流失的影响,这可能导致有偏见的估计。在线面板也不例外,但由于数据的实时可用性,在线面板在监测和管理数据收集阶段和响应增强功能(如提醒)方面提供了很大的可能性。本文提出了一种数据驱动的方法来监测数据收集阶段,并告知在在线面板波数据收集期间响应增强特征的调整,该方法考虑了正在进行的面板波的特征。为此,我们研究了基于概率的在线面板每一波的日响应比例的演变。利用多层模型,我们预测了每波日的数据收集演变。在我们的示例中,数据收集演化的功能形式是五次的。影响数据收集演化形状的特征是特定波日的特征,而不是面板波本身的特征。此外,我们模拟监测一个面板波的每日响应比例,发现在连续20个面板波后可以调整发送提醒的时间,以保持数据收集阶段的效率。我们的研究结果证明了重新评估数据收集阶段的特征的重要性,例如提醒的时间,在整个在线面板的生命周期中保持实地工作的效率。
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来源期刊
CiteScore
2.50
自引率
11.10%
发文量
43
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