你们祈求就得着。密歇根资本融资债券选举提案的自动文本挖掘,以确定哪些主题与债券通过和选民投票率相关

IF 0.2 Q4 EDUCATION & EDUCATIONAL RESEARCH Journal of Education Finance Pub Date : 2015-12-04 DOI:10.7916/D8FJ2GDH
Alex Bowers, Jingjing Chen
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引用次数: 18

摘要

本研究的目的是将学区资本设施融资、市政债券选举、条件时变结果的统计模型和选举投票提案自动文本挖掘的数据挖掘算法的最新研究文献结合起来,以检查影响1998年至2014年密歇根州学区资本设施融资债券选举通过或失败概率的因素。自动文本挖掘是一种从文档语料库中识别潜在主题的数据挖掘技术。我们使用无监督相关主题模型来分析密歇根州16年来所有1,210个学区资本设施债券选举投票提案的全文措辞。该模型确定了债券中9个不同的潜在主题,包括购买新建筑、翻新和体育设施的请求。有趣的是,设备购买似乎是债券提案主题的一个独特类别。然后,我们使用最近文献中的建模技术和控制变量检验了债券主题对债券通过概率和选民投票率的独立影响。与要求新建筑或综合投票提案的债券相比,专注于体育设施的债券通过的可能性低4.35倍。这项工作扩展了先前的研究,表明通过的资本设施债券提案通常在一次投票提案中包含所有设施需求,是投票的第一次尝试,在投票中名列前茅,并且要求的支出金额较低。
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Ask and Ye Shall Receive?: Automated Text Mining of Michigan Capital Facility Finance Bond Election Proposals to Identify which Topics are Associated with Bond Passage and Voter Turnout
The purpose of this study is to bring together recent innovations in the research literature around school district capital facility finance, municipal bond elections, statistical models of conditional time-varying outcomes, and data mining algorithms for automated text mining of election ballot proposals to examine the factors that influence the probability of school districts in the state of Michigan passing or failing capital facility finance bond elections from 1998– 2014. Automated text mining is a data mining technique that identifies latent topics from a corpus of documents. We used an unsupervised correlated topic model to analyze the full text wording of all 1,210 school district capital facility bond election ballot proposals in Michigan over 16 years. The model identified 9 different latent topics across the bonds, including requests to purchase new buildings, renovations, and athletic facilities. Interestingly, equipment purchases appear to be a distinct category of bond proposal topics. We then examined the independent effect of the bond topics on the probability of passing the bond and voter turnout using modeling techniques and control variables from the recent literature. Bonds that focused exclusively on athletic facilities were 4.35 times less likely to pass than bonds that request new construction or omnibus ballot proposals. This work extends previous research to show that capital facility bond proposals that pass the most often include all facility needs in a single ballot proposal, are the first attempt at the polls, are at the top of the ballot, and request lower amounts of spending.
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来源期刊
Journal of Education Finance
Journal of Education Finance EDUCATION & EDUCATIONAL RESEARCH-
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期刊介绍: For over three decades the Journal of Education Finance has been recognized as one of the leading journals in the field of the financing of public schools. Each issue brings original research and analysis on issues such as educational fiscal reform, judicial intervention in finance, adequacy and equity of public school funding, school/social agency linkages, taxation, factors affecting employment and salaries, and the economics of human capital development.
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