信息价值:贝叶斯证据综合中的敏感性分析与研究设计

Value of Information: Sensitivity Analysis and Research Design in Bayesian Evidence Synthesis

Journal of the American Statistical Association · 2019
被引 33
ABS 4

中文导读

本文介绍了在贝叶斯证据综合中如何通过信息价值分析来识别关键参数、量化不确定性来源,并优化数据收集设计,以HIV感染率估计为例展示了方法的应用。

Abstract

Suppose we have a Bayesian model that combines evidence from several different sources. We want to know which model parameters most affect the estimate or decision from the model, or which of the parameter uncertainties drive the decision uncertainty. Furthermore, we want to prioritize what further data should be collected. These questions can be addressed by Value of Information (VoI) analysis, in which we estimate expected reductions in loss from learning specific parameters or collecting data of a given design. We describe the theory and practice of VoI for Bayesian evidence synthesis, using and extending ideas from health economics, computer modeling and Bayesian design. The methods are general to a range of decision problems including point estimation and choices between discrete actions. We apply them to a model for estimating prevalence of HIV infection, combining indirect information from surveys, registers, and expert beliefs. This analysis shows which parameters contribute most of the uncertainty about each prevalence estimate, and the expected improvements in precision from specific amounts of additional data. These benefits can be traded with the costs of sampling to determine an optimal sample size. Supplementary materials for this article, including a standardized description of the materials available for reproducing the work, are available as an online supplement.

贝叶斯统计信息价值分析敏感性分析研究设计证据综合