The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States

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...

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Main Authors: Nathan E. Sanders, Victor Lei
Format: Article
Language:English
Published: Taylor & Francis Group 2018-01-01
Series:Statistics and Public Policy
Subjects:
Online Access:http://dx.doi.org/10.1080/2330443X.2018.1448733
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spelling doaj-3e25a781ebfd41af9a49621013984de12020-11-24T22:01:54ZengTaylor & Francis GroupStatistics and Public Policy2330-443X2018-01-01511810.1080/2330443X.2018.14487331448733The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United StatesNathan E. Sanders0Victor Lei1Legendary EntertainmentLegendary EntertainmentWhile 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.http://dx.doi.org/10.1080/2330443X.2018.1448733Bayesian modelingGaussian processGun controlPrior information
collection DOAJ
language English
format Article
sources DOAJ
author Nathan E. Sanders
Victor Lei
spellingShingle Nathan E. Sanders
Victor Lei
The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
Statistics and Public Policy
Bayesian modeling
Gaussian process
Gun control
Prior information
author_facet Nathan E. Sanders
Victor Lei
author_sort Nathan E. Sanders
title The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
title_short The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
title_full The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
title_fullStr The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
title_full_unstemmed The Role of Prior Information in Inference on the Annualized Rates of Mass Shootings in the United States
title_sort role of prior information in inference on the annualized rates of mass shootings in the united states
publisher Taylor & Francis Group
series Statistics and Public Policy
issn 2330-443X
publishDate 2018-01-01
description 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.
topic Bayesian modeling
Gaussian process
Gun control
Prior information
url http://dx.doi.org/10.1080/2330443X.2018.1448733
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