A clustering algorithm for university admissions
In 2003 The Supreme Court declared that all government funded universities, which choose to consider race in their admissions processes, must utilize a holistic process. A holistic process includes a thorough evaluation of all aspects of each applicant. For larger universities this type of admission...
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ndltd-RICE-oai-scholarship.rice.edu-1911-205312013-10-23T04:08:29ZA clustering algorithm for university admissionsReed, Naomi BethMathematicsIn 2003 The Supreme Court declared that all government funded universities, which choose to consider race in their admissions processes, must utilize a holistic process. A holistic process includes a thorough evaluation of all aspects of each applicant. For larger universities this type of admissions process would be very taxing. A computer scientist from Auburn University created an algorithm, Applications Quest, to handle large quantities of applications in a way that would evaluate applicants holistically with a computational tool. Applications Quest utilizes the Euclidean distance measure, Similarity matrices, Divisive Clustering, and Random Selection. This algorithm produces a diverse admittance class for a university. In this research we simulate this algorithm and run tests with hypothetical Rice University data. Ultimately, we are left with the following question: Can a computational use of arbitrary difference account for human qualities that define certain social phenomena, such as underrepresentation in higher education?Tapia, Richard A.2009-06-03T21:09:09Z2009-06-03T21:09:09Z2007ThesisText46 p.application/pdfhttp://hdl.handle.net/1911/20531eng |
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Mathematics Reed, Naomi Beth A clustering algorithm for university admissions |
description |
In 2003 The Supreme Court declared that all government funded universities, which choose to consider race in their admissions processes, must utilize a holistic process. A holistic process includes a thorough evaluation of all aspects of each applicant. For larger universities this type of admissions process would be very taxing. A computer scientist from Auburn University created an algorithm, Applications Quest, to handle large quantities of applications in a way that would evaluate applicants holistically with a computational tool. Applications Quest utilizes the Euclidean distance measure, Similarity matrices, Divisive Clustering, and Random Selection. This algorithm produces a diverse admittance class for a university. In this research we simulate this algorithm and run tests with hypothetical Rice University data. Ultimately, we are left with the following question: Can a computational use of arbitrary difference account for human qualities that define certain social phenomena, such as underrepresentation in higher education? |
author2 |
Tapia, Richard A. |
author_facet |
Tapia, Richard A. Reed, Naomi Beth |
author |
Reed, Naomi Beth |
author_sort |
Reed, Naomi Beth |
title |
A clustering algorithm for university admissions |
title_short |
A clustering algorithm for university admissions |
title_full |
A clustering algorithm for university admissions |
title_fullStr |
A clustering algorithm for university admissions |
title_full_unstemmed |
A clustering algorithm for university admissions |
title_sort |
clustering algorithm for university admissions |
publishDate |
2009 |
url |
http://hdl.handle.net/1911/20531 |
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AT reednaomibeth aclusteringalgorithmforuniversityadmissions AT reednaomibeth clusteringalgorithmforuniversityadmissions |
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