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LEARNING FROM LAW ENFORCEMENT

机译:向执法部门学习

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摘要

This paper studies how punishment affects future compliance behavior and isolates deterrence effects mediated by learning. Using administrative data from speed cameras that capture the full driving histories of more than a million cars over several years, we evaluate responses to punishment at the extensive (receiving a speeding ticket) and intensive margins (tickets with higher fines). Two complementary empirical strategies-a regression discontinuity design and an event studycoherently document strong responses to receiving a ticket: The speeding rate drops by a third and re-offense rates fall by 70%. Higher fines produce a small but imprecisely estimated additional effect. All responses occur immediately and are persistent over time, with no backsliding toward speeding even two years after receiving a ticket. Our evidence rejects unlearning and temporary salience effects. Instead, it supports a learning model in which agents update their priors on the expected punishment in a coarse manner.
机译:本文研究了惩罚如何影响未来的合规行为,并隔离了学习介导的威慑作用。使用来自速度摄像机的管理数据,这些数据在几年内捕获了超过一百万辆汽车的完整驾驶历史,我们评估了对广泛的惩罚(接收超速票)和密集利润率(罚款更高的票)的反应。两种互补的经验策略 - A回归不连续性设计和一个研究共同的事件记录了对接收机票的强烈反应:超速率下降了三分之一,而重复犯罪率下降了70%。较高的罚款会产生较小但不准确的额外效果。所有反应立即发生,并且随着时间的流逝而持续存在,甚至在收到票后两年,也没有退步。我们的证据拒绝学习和暂时的显着影响。取而代之的是,它支持一种学习模型,在该模型中,代理商以粗略的方式对预期的惩罚更新他们的先验。

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