Causal inference and American political development: the case of the gag rule

被引:0
作者
Jeffery A. Jenkins
Charles Stewart
机构
[1] University of Southern California,Price School of Public Policy
[2] The Massachusetts Institute of Technology,Department of Political Science
来源
Public Choice | 2020年 / 185卷
关键词
Congress; Gag rule; Slavery; Causal inference; D72; N41;
D O I
暂无
中图分类号
学科分类号
摘要
We investigate the “gag rule”, a parliamentary device that from 1836 to 1844 barred the US House of Representatives from receiving petitions concerning the abolition of slavery. In the mid-1830s, the gag rule emerged as a partisan strategy to keep slavery off the congressional agenda, amid growing abolitionist agitation in the North. Very quickly, however, the strategy backfired, as the gag rule was framed successfully as a mechanism that encroached on white northerners’ rights of petition. By 1844, popular pressure had become so great that many northern Democrats, an important bloc of prior gag rule supporters, yielded to electoral pressure, broke party ranks, and voted to rescind the rule, thereby sealing its fate. More generally, the politics of the gag rule provide an interesting causal-inference case study of the interplay between social movement development and congressional politics before the Civil War.
引用
收藏
页码:429 / 457
页数:28
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