预测佐治亚理工学院在线分析硕士项目的申请人录取状况

S. Staudaher, Jeonghyun Lee, F. Soleimani
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引用次数: 3

摘要

这项工作报告了在建立一个公平的模型来预测佐治亚理工学院在线分析硕士项目申请人的成功方面取得的进展。作为第一步,我们收集并处理了9044份申请的数据,并训练了一个ROC-AUC分数为0.81的预测模型,该模型预测了申请人是否会被录取。我们接下来的步骤将包括使用申请人数据来模拟成功完成分析项目的三门核心课程、毕业和最后的就业安置。此外,我们计划扩展我们的特征处理和合并技术,以确保我们的模型不会基于人口统计因素进行歧视。从长远来看,我们希望本研究的结果可以用于改进课程内容,选课,前提培训,甚至指导申请者的选择。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Applicant Admission Status for Georgia Tech's Online Master's in Analytics Program
This work reports on progress made towards building an equitable model to predict the success of an applicant to Georgia Tech's Online Master's in Analytics program. As a first step, we have collected and processed data on 9,044 applications and have trained a predictive model with a ROC-AUC score of 0.81, which predicts whether an applicant would be admitted to the program. Our next steps will include using applicant data to model the successful completion of the Analytics program's three core courses, graduation, and finally job placement. In addition, we plan to expand our feature processing and incorporate techniques to ensure that our models do not discriminate based on demographic factors. In the long run, we hope that the results of this study can be used to improve the course contents, selection of offered courses, and prerequisite training, and even give guidance toward the selection of the applicants.
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