Evaluating the relative contribution of data sources in a Bayesian analysis with the application of estimating the size of hard to reach populations.

Jacob Parsons, Xiaoyue Niu, Le Bao
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引用次数: 2

Abstract

When using multiple data sources in an analysis, it is important to understand the influence of each data source on the analysis and the consistency of the data sources with each other and the model. We suggest the use of a retrospective value of information framework in order to address such concerns. Value of information methods can be computationally difficult. We illustrate the use of computational methods that allow these methods to be applied even in relatively complicated settings. In illustrating the proposed methods, we focus on an application in estimating the size of hard to reach populations. Specifically, we consider estimating the number of injection drug users in Ukraine by combining all available data sources spanning over half a decade and numerous sub-national areas in the Ukraine. This application is of interest to public health researchers as this hard to reach population that plays a large role in the spread of HIV. We apply a Bayesian hierarchical model and evaluate the contribution of each data source in terms of absolute influence, expected influence, and level of surprise. Finally we apply value of information methods to inform suggestions on future data collection.

评估贝叶斯分析中数据源的相对贡献,并应用于估计难以到达的人口的规模。
在分析中使用多个数据源时,了解每个数据源对分析的影响以及数据源之间和模型之间的一致性非常重要。我们建议使用回顾性价值的信息框架来解决这些问题。信息的价值方法在计算上是困难的。我们举例说明了计算方法的使用,即使在相对复杂的设置中也可以应用这些方法。为了说明所提出的方法,我们将重点放在估计难以达到的人口规模的应用上。具体而言,我们考虑通过结合乌克兰超过五年的所有可用数据来源和许多次国家地区来估计乌克兰注射吸毒者的数量。这一应用引起了公共卫生研究人员的兴趣,因为很难接触到在艾滋病毒传播中起重要作用的人群。我们应用贝叶斯层次模型,并根据绝对影响、预期影响和意外程度评估每个数据源的贡献。最后,我们运用信息方法的价值为未来的数据收集提供建议。
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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