先验信息在推断美国每年大规模枪击事件发生率中的作用

IF 1.5 Q2 SOCIAL SCIENCES, MATHEMATICAL METHODS
Nathan Sanders, Victor Lei
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引用次数: 7

摘要

摘要虽然美国关于枪支管制的公开辩论往往取决于个别公共大规模枪击事件,但立法行动应了解这些事件的长期演变。我们提出了一个新的贝叶斯模型,用于美国公共大规模枪击事件的年化率,该模型基于具有时变均值函数的高斯过程。虽然我们对美国这些枪击事件的长期和短期趋势提出了具体的调查结果,但我们的重点是了解模型设计和先前信息在政策分析中的作用。使用马尔可夫链蒙特卡罗推理技术,我们探索了不同先验选择的后验结果,并探索了超参数之间的相关性。我们证明,关于公共大规模枪击事件年化率长期演变的发现对先验信息的选择是稳健的,而关于短期变化的时间尺度和幅度的推断敏感地依赖于先验信息。这项工作解决了模型设计中先验信息的隐式和显式选择的政策含义,以及全贝叶斯推理在评估这些选择的后果中的效用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
ABSTRACT While public debate over gun control in the United States has often hinged on individual public mass shooting incidents, legislative action should be informed by knowledge of the long-term evolution of these events. We present a new Bayesian model for the annualized rate of public mass shootings in the United States based on a Gaussian process with a time-varying mean function. While we present specific findings on long- and short-term trends of these shootings in the U.S., our focus is on understanding the role of model design and prior information in policy analysis. Using a Markov chain Monte Carlo inference technique, we explore the posterior consequences of different prior choices and explore correlations between hyperparameters. We demonstrate that the findings about the long-term evolution of the annualized rate of public mass shootings are robust to choices about prior information, while inferences about the timescale and amplitude of short-term variation depend sensitively on the prior. This work addresses the policy implications of implicit and explicit choices of prior information in model design and the utility of full Bayesian inference in evaluating the consequences of those choices.
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来源期刊
Statistics and Public Policy
Statistics and Public Policy SOCIAL SCIENCES, MATHEMATICAL METHODS-
CiteScore
3.20
自引率
6.20%
发文量
13
审稿时长
32 weeks
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