An Empirical Study - The Cardinal Factors towards Recruitment of Faculty in Higher Educational Institutions using Machine Learning

Sapna Arora, Ruchi Kawatra, Manisha Agarwal
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引用次数: 2

Abstract

Teaching Job Performance is one of the salient and sensitive issues when it is associated with the recruitment and deployment of faculty for Higher Education Institutions. Recruiting effective faculty contributes to the growth and enhancement in the quality of education. Considering this, the study unveils the importance of four cardinal factors on a real dataset sample of 520 faculty, from different departments of Indian Institutes. Cardinal factors such as Faculty’s Experience, National Eligibility Test, Student Feedback, and Faculty’s Highest Qualification are taken into consideration. The classifiers used to strengthen research are Logistic Regression, Support Vector Machine, K-Nearest Neighbors, and Decision Tree. The results prove that the correlation between Faculty’s Experience, Faculty’s Highest Qualification with Student Feedback is the best way to analyze a Faculty's Teaching Performance. Analyzing and predicting the importance of four cardinal parameters will help educational institutions, regulatory and accreditation bodies improve education quality.
一项实证研究——利用机器学习招聘高等院校教师的主要因素
教学工作绩效是关系到高校教师招聘和配置的一个突出而敏感的问题。聘请有能力的教师,有助发展及提高教育质素。考虑到这一点,该研究揭示了来自印度研究所不同部门的520名教师的真实数据集样本中四个主要因素的重要性。主要考虑教师的经验、国家资格考试、学生反馈和教师的最高资格等因素。用于加强研究的分类器有逻辑回归、支持向量机、k近邻和决策树。结果表明,教师经验、教师最高资格与学生反馈之间的相关性是分析教师教学绩效的最佳方法。分析和预测四个基本参数的重要性将有助于教育机构、监管机构和认证机构提高教育质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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