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A geographic-information-systems-based approach to analysis of characteristics predicting student persistence and graduation.

机译:基于地理信息系统的方法,用于分析预测学生坚持和毕业的特征。

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摘要

This study sought to provide empirical evidence regarding the use of spatial analysis in enrollment management to predict persistence and graduation. The research utilized data from the 2000 U.S. Census and applicant records from The University of Arizona to study the spatial distributions of enrollments. Based on the initial results, stepwise logistic regression was used to identify spatially associated student and neighborhood characteristics predicting persistence and graduation.;The findings of this research indicate spatial analysis can be used as a valuable resource for enrollment management. Using a theoretical framework of the forms of capital and social reproduction, cultural and social capital characteristics were found to influence persistence at statistically significant levels. Most notably, the social capital proxy of neighborhood education levels, and the cultural capital proxies of the number of standardized tests a student has taken, and when the application for admission is submitted all significantly influenced a student's probability to persistence and graduate. When disaggregating by race and ethnicity, resident Hispanic students from highly Hispanic neighborhoods were found to persist at higher levels in the first year of college attendance. Also, resident Native Americans were found to have a higher probability to persist when evidencing cultural capital characteristics. Since spatially based student and neighborhood characteristics can be quantified and mapped, target populations can be identified and subsequently recruited, resulting in retention-focused admissions.
机译:这项研究旨在提供有关在招生管理中使用空间分析预测持久性和毕业率的经验证据。这项研究利用了2000年美国人口普查数据和亚利桑那大学的申请人记录来研究入学人数的空间分布。在初步研究结果的基础上,采用逐步逻辑回归法确定与空间相关的学生和邻里特征,以预测持久性和毕业情况。研究结果表明,空间分析可作为入学管理的宝贵资源。使用资本和社会再生产形式的理论框架,发现文化和社会资本特征在统计上显着水平上影响持久性。最值得注意的是,社区教育水平的社会资本代理以及学生参加的标准化考试数量的文化资本代理,以及提交入学申请时,所有这些都显着影响了学生坚持不懈和毕业的可能性。当按种族和种族分类时,来自高西班牙裔社区的居民西班牙裔学生被发现在大学入学的第一年保持较高水平。此外,还发现居民美国原住民在证明文化资本特征时更有可能继续存在。由于可以对基于空间的学生和邻里特征进行量化和制图,因此可以识别目标人群并随后招募目标人群,从而使入学重点突出。

著录项

  • 作者

    Ousley, Chris.;

  • 作者单位

    The University of Arizona.;

  • 授予单位 The University of Arizona.;
  • 学科 Geography.;Education Policy.;Education Higher Education Administration.
  • 学位 Ph.D.
  • 年度 2010
  • 页码 290 p.
  • 总页数 290
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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