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首页> 外文期刊>Frontiers in Psychology >The Importance of Prior Sensitivity Analysis in Bayesian Statistics: Demonstrations Using an Interactive Shiny App
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The Importance of Prior Sensitivity Analysis in Bayesian Statistics: Demonstrations Using an Interactive Shiny App

机译:贝叶斯统计数据敏感性分析的重要性:使用互动闪亮应用程序的示范

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The current paper highlights a new, interactive Shiny App that can be used to aid in understanding and teaching the important task of conducting a prior sensitivity analysis when implementing Bayesian estimation methods. In this paper, we discuss the importance of examining prior distributions through a sensitivity analysis. We argue that conducting a prior sensitivity analysis is equally important when so-called diffuse priors are implemented as it is with subjective priors. As a proof of concept, we conducted a small simulation study, which illustrates the impact of priors on final model estimates. The findings from the simulation study highlight the importance of conducting a sensitivity analysis of priors. This concept is further extended through an interactive Shiny App that we developed. The Shiny App allows users to explore the impact of various forms of priors using empirical data. We introduce this Shiny App and thoroughly detail an example using a simple multiple regression model that users at all levels can understand. In this paper, we highlight how to determine the different settings for a prior sensitivity analysis, how to visually and statistically compare results obtained in the sensitivity analysis, and how to display findings and write up disparate results obtained across the sensitivity analysis. The goal is that novice users can follow the process outlined here and work within the interactive Shiny App to gain a deeper understanding of the role of prior distributions and the importance of a sensitivity analysis when implementing Bayesian methods. The intended audience is broad (e.g., undergraduate or graduate students, faculty, and other researchers) and can include those with limited exposure to Bayesian methods or the specific model presented here.
机译:目前的纸张突出了一个新的交互式闪亮应用程序,可用于帮助理解和教学在实施贝叶斯估计方法时进行现有敏感性分析的重要任务。在本文中,我们探讨了通过敏感性分析检查先前分布的重要性。我们认为,当所谓的漫射前沿在与主体前沿实施时,进行现有敏感性分析同样重要。作为概念证明,我们进行了一项小型仿真研究,其示出了前瞻对最终模型估计的影响。仿真研究的发现突出了对前沿进行敏感性分析的重要性。通过我们开发的互动闪亮应用程序进一步扩展了这一概念。闪亮的应用程序允许用户使用经验数据探索各种形式的前方的影响。我们介绍了这款闪亮的应用程序,并使用简单的多元回归模型彻底详细说明了所有级别的用户可以理解的用户。在本文中,我们突出了如何确定先前灵敏度分析的不同设置,如何在灵敏度分析中直观地和统计比较结果,以及如何在敏感性分析中显示发现和写入不同的结果。目标是新手用户可以遵循这里概述的过程,并在互动闪亮的应用程序中工作,了解对现有分布的作用以及在实施贝叶斯方法时的敏感性分析的重要性。预定的受众广泛(例如,本科或研究生,教师和其他研究人员),并且可以包括接触贝叶斯方法有限的人或这里呈现的具体模型。

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