基于疫情前和疫情后情景的研究生招生分析与预测

Sagnik Sarkar, Sriya I. Reddi, R. Manjula
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引用次数: 0

摘要

研究生招生是吸引许多潜在学生和大学的活动之一。无论是进行研究生招生的大学还是有抱负的学生;两者都渴望有一个预测系统来帮助选择录取的过程。一方面,大学可以了解学生被录取的概率,从而帮助研究生招生办公室完成他们的工作量,另一方面,学生可以得到一个被录取的机会的预测,并可以采取先发制人的决定来促进这一过程。然而,由于新冠肺炎疫情,研究生招生模式发生了轻微变化。这种变化在有关群众中造成了混乱。对这一变化进行探索性分析可以作为采取行动的参考。在本研究中,建立了一个带有额外参数的预测模型,该参数表示数据集中的记录是否属于COVID-19大流行时期。使用逻辑回归、决策树、随机森林、高斯朴素贝叶斯和人工神经网络等各种模型来确定由于大流行影响而入院概率的变化。所有的模型都提供了大约55%到80%的准确率分数,其中神经网络以79.03%的测试准确率分数优于所有其他模型。大流行的影响对各种因素造成了模糊的反应,但可以说,学生的录取机会普遍增加,可能是由于申请人数减少
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Analysis and Prediction of Graduate Admissions Based on Pre-COVID and post-COVID Scenario
Graduate admissions is one of the events that attracts a lot of attraction from prospective students and universities alike. Be it the university conducting graduate admissions or an aspiring student; both yearn for a prediction system to aid in the process of selecting admits. On one hand, the university can get an insight on the probability of a student's admit thus aiding the graduate admissions office in their workload, and on the other hand the student can get a forecast on the chance of admit and can take preemptive decisions to facilitate the process. However, due to the COVID-19 pandemic, the graduate admissions has seen a slight change in paradigm. This change creates confusion among the related masses. A probing analysis on this change serves as a reference to act upon. In this study, prediction models are built with an extra parameter signifying whether a record in the dataset belongs to the COVID-19 pandemic period. Various models such as Logistic Regression, Decision Tree, Random Forest, Gaussian Naive Bayes and Artificial Neural Networks are used to determine the change in probability of admission due to the effect of the pandemic. All the models provide an accuracy score in the range of about 55% to 80%, with the Neural Network outperforming all the other models with a test accuracy score of 79.03%. The effect of the pandemic has caused an ambiguous response to various factors, but it can be stated the chances of admits of students have generally increased likely due to the lower number of applicants
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