Using Business Intelligence in College Admissions

Author:

Amburgey W. O. Dale1,Yi John1

Affiliation:

1. Saint Joseph’s University, USA

Abstract

Higher education often lags behind industry in the adoption of new or emerging technologies. As competition increases among colleges and universities for a diminishing supply of prospective students, the need to adopt the principles of business intelligence becomes increasingly more important. Data from first-year enrolling students for the 2006-2008 fall terms at a private, master’s-level institution in the northeastern United States was analyzed for the purpose of developing predictive models. A decision tree analysis, a neural network analysis, and a multiple regression analysis were conducted to predict each student’s grade point average (GPA) at the end of the first year of academic study. Numerous geodemographic variables were analyzed to develop the models to predict the target variable. The overall performance of the models developed in the analysis was evaluated by using the average square error (ASE). The three models had similar ASE values, which indicated that any of the models could be used for the intended purpose. Suggestions for future analysis include expansion of the scope of the study to include more student-centric variables and to evaluate GPA at other student levels.

Publisher

IGI Global

Subject

Information Systems and Management,Statistics, Probability and Uncertainty,Management Information Systems

Cited by 6 articles. 订阅此论文施引文献 订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献

1. Evaluation of college admissions: a decision tree guide to provide information for improvement;Humanities and Social Sciences Communications;2022-10-25

2. Enrollment management analytics: a practical framework;Journal of Applied Research in Higher Education;2019-10-14

3. Predictive Analytics Approach to Improve and Sustain College Students’ Non-Cognitive Skills and Their Educational Outcome;Sustainability;2018-11-02

4. Bridging Higher Education and Market Dynamics in a Business Intelligence Framework;2015 International Conference on Developments of E-Systems Engineering (DeSE);2015-12

5. A New Data Mining Model Adopted for Higher Institutions;Procedia Computer Science;2015

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