代理(哲学)
官僚主义
背景(考古学)
执法
政府(语言学)
执行
官员
舆论
感知
不当行为
业务
公共关系
工作(物理)
公共行政
政治学
法学
政治
社会学
心理学
工程类
机械工程
古生物学
社会科学
语言学
哲学
神经科学
生物
作者
Kaylyn Jackson Schiff,Daniel Schiff,Ian T. Adams,Joshua McCrain,Scott M. Mourtgos
摘要
Abstract Law enforcement agencies are increasingly adopting AI‐powered tools. While prior work emphasizes the technological features driving public opinion, we investigate how public trust and support for AI in government vary with the institutional context. We administer a pre‐registered survey experiment to 4200 respondents about AI use cases in policing to measure responsiveness to three key institutional factors: bureaucratic proximity (i.e., local sheriff versus national FBI), algorithmic targets (i.e., public targets via predictive policing versus detecting officer misconduct through automated case review), and agency capacity (i.e., necessary resources and expertise). We find that the public clearly prefers local over national law enforcement use of AI, while reactions to different algorithmic targets are more limited and politicized. However, we find no responsiveness to agency capacity or lack thereof. The findings suggest the need for greater scholarly, practitioner, and public attention to organizational, not only technical, prerequisites for successful government implementation of AI. This article is protected by copyright. All rights reserved.
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