Interactive visualization to facilitate monitoring longitudinal survey data and paradata

Joe Murphy, Michael A. Duprey, Robert F. Chew, P. Biemer, K. Harris, C. Halpern
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引用次数: 2

Abstract

Surveys often require monitoring during data collection to ensure progress in meeting goals or to evaluate the interim results of an embedded experiment. Under complex designs, the amount of data available to monitor may be overwhelming and the production of reports and charts can be costly and time consuming. This is especially true in the case of longitudinal surveys, where data may originate from multiple waves. Other such complex scenarios include adaptive and responsive designs, which were developed to act on the results of such monitoring to implement prespecified options or alternatives in protocols. This paper discusses the development of an interactive web-based data visualization tool, the Adaptive Total Design (ATD) Dashboard, which we designed to provide a wide array of survey staff with the information needed to monitor data collection daily. The dashboard was built using the R programming language and Shiny framework and provides users with a wide range of functionality to quickly assess trends. We present the structure of the data used to populate the dashboard, its design, and the process for hosting it on the web. Furthermore, we provide guidance on graphic design, data taxonomy, and software decisions that can help guide others in the process of developing their own data collection monitoring systems. To illustrate the benefits of the dashboard, we present examples from the National Longitudinal Study of Adolescent to Adult Health (Add Health). We also discuss features of the dashboard to be developed for future waves of Add Health.
交互式可视化,便于监测纵向调查数据和数据
调查通常需要在数据收集过程中进行监测,以确保在实现目标方面取得进展,或评估嵌入实验的中期结果。在复杂的设计中,可用于监控的数据量可能是压倒性的,报告和图表的制作可能是昂贵和耗时的。在纵向调查中尤其如此,因为数据可能来自多个波。其他此类复杂方案包括自适应和响应性设计,这些设计是为了根据这种监测的结果采取行动,以执行协议中预先规定的备选方案或替代方案。本文讨论了基于web的交互式数据可视化工具——自适应总体设计(ATD)仪表板的开发,我们设计该工具的目的是为广泛的调查人员提供日常监测数据收集所需的信息。仪表板是使用R编程语言和Shiny框架构建的,为用户提供了广泛的功能来快速评估趋势。我们介绍了用于填充仪表板的数据结构、它的设计以及在web上托管它的过程。此外,我们还提供图形设计、数据分类和软件决策方面的指导,这些指导可以帮助指导其他人在开发自己的数据收集监控系统的过程中。为了说明仪表板的好处,我们从青少年到成人健康的国家纵向研究(Add Health)中提出了一些例子。我们还讨论了将为未来的“添加健康”浪潮开发的仪表板的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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