州立法区内地理分配选区识别的准确性

IF 1.7 2区 社会学 Q2 POLITICAL SCIENCE
T. Steelman, John A. Curiel
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引用次数: 0

摘要

摘要确定代表的地理选区是州和地方政治研究中最关键但最具挑战性的方面之一。经常变化的地区线、不完整的数据和计算障碍可能会阻碍个人与各自地区的匹配。对住宅地址进行地理编码是进行匹配的理想方法。然而,成本限制可能会限制其对许多研究人员的适用性,导致使用多边形单位(如邮政编码)来估计选区成员的地理分配方法。在这项研究中,我们量化了三种地理分配匹配方法——质心、地理重叠和人口重叠匹配——在将个人选民分配到州立法区方面的权衡。我们证实,当多边形位置数据可用时,人口重叠匹配在将选民分配到州立法区时产生了最高的准确性。我们通过对Bishop和Dudley(2017),“选区、政党和工业在宾夕法尼亚州第13号法案中的作用”,《州政治与政策季刊》17(2):154–79的复制分析,改进了游说影响力的模型估计,从而验证了这一发现。我们的复制表明,区分区外和区内捐款对区内游说工作的影响更大。我们清楚地表明,当没有精确的位置数据时,人口重叠分配可以自信地用于识别选区。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Accuracy of Identifying Constituencies with Geographic Assignment Within State Legislative Districts
Abstract Identifying the geographic constituencies of representatives is among the most crucial, yet challenging, aspects of state and local politics research. Regularly changing district lines, incomplete data, and computational obstacles can present barriers to matching individuals to their respective districts. Geocoding residential addresses is the ideal method for matching purposes. However, cost constraints can limit its applicability for many researchers, leading to geographic assignment methods that use polygonal units, such as ZIP codes, to estimate constituency membership. In this study, we quantify the trade-offs between three geographic assignment matching methods – centroid, geographic overlap, and population overlap matching – on the assignment of individual voters to state legislative districts. We confirm that population overlap matching produces the highest accuracy in assigning voters to their state legislative districts when polygonal location data are all that is available. We validate this finding by improving model estimates of lobbying influence through a replication analysis of Bishop and Dudley (2017), “The Role of Constituency, Party, and Industry in Pennsylvania’s Act 13,” State Politics and Policy Quarterly 17 (2): 154–79. Our replication suggests that distinguishing between out-of-district and in-district donations reveals a greater impact for in-district lobbying efforts. We make evident that population overlap assignment can confidently be used to identify constituencies when precise location data is not available.
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来源期刊
CiteScore
2.00
自引率
6.70%
发文量
24
期刊介绍: State Politics & Policy Quarterly (SPPQ) features studies that develop general hypotheses of political behavior and policymaking and test these hypotheses using the unique methodological advantages of the states. It also includes field review essays and a section entitled “The Practical Researcher,” which is a service-oriented feature designed to provide a data, methodological, and assessment resource for those conducting research on state politics. SPPQ is the official journal of the State Politics and Policy section of the American Political Science Association and is published by the University of Illinois Press for the Institute of Legislative Studies at the University of Illinois at Springfield.
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