Exploiting Machine Learning and Feature Selection Algorithms to Predict Instructor Performance in Higher Education

IF 0.5 4区 计算机科学 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS
Ravinder Ahuja, S. C. Sharma
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引用次数: 4

Abstract

Machine learning has emerged as the most important and widely used tool in resolving the administrative and other educational related problems. Most of the research in the educational field centers on demonstrating the student's potential rather than focusing on faculty quality. In this paper the performance of the instructor is evaluated through feedback collected from students in the questionnaire form. The unlabelled dataset is taken from UCI machine learning repository consisting of 5820 records with 33 attributes. Firstly, the dataset is labelled(three labels) using agglomerative clustering and the k-means algorithms. Further, five feature selection techniques (Random Forest,Principal Component Analysis, Recursive Feature Selection, Univariate Feature Selection, and Genetic Algorithm) are applied to extract essential features. After feature selection, twelve classification algorithms (K Nearest Neighbor, XGBoost, Multi-Layer Perceptron, AdaBoost, Random Forest, Logistic Regression, Decision Tree, Bagging, LightGBM, Support Vector Machine, Extra Tree and Naive Bayes) are applied using Python language. Out of all algorithms applied, Support Vector Machine with PCA feature selection technique has given the highest accuracy value 99.66%, recall value 99.66%, precision value 99.67%, and f-score value 99.67%. To prove that results are statistically different, we have applied ANOVA one way test.
利用机器学习和特征选择算法预测高等教育教师的表现
机器学习已经成为解决管理和其他教育相关问题的最重要和最广泛使用的工具。教育领域的大多数研究都集中在展示学生的潜力上,而不是关注教师的素质。本文通过问卷调查的形式收集学生的反馈来评估教师的绩效。未标记数据集取自UCI机器学习存储库,由5820条记录和33个属性组成。首先,使用聚集聚类和k-means算法对数据集进行标记(三个标签)。此外,采用随机森林、主成分分析、递归特征选择、单变量特征选择和遗传算法等五种特征选择技术提取基本特征。经过特征选择,采用Python语言,采用K近邻、XGBoost、多层感知器、AdaBoost、随机森林、Logistic回归、决策树、Bagging、LightGBM、支持向量机、Extra Tree、朴素贝叶斯等12种分类算法进行分类。在所有应用的算法中,支持向量机与PCA特征选择技术的准确率最高,达到99.66%,召回率99.66%,精度99.67%,f-score值99.67%。为了证明结果在统计上是不同的,我们采用了方差分析的单向检验。
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来源期刊
Journal of Information Science and Engineering
Journal of Information Science and Engineering 工程技术-计算机:信息系统
CiteScore
2.00
自引率
0.00%
发文量
4
审稿时长
8 months
期刊介绍: The Journal of Information Science and Engineering is dedicated to the dissemination of information on computer science, computer engineering, and computer systems. This journal encourages articles on original research in the areas of computer hardware, software, man-machine interface, theory and applications. tutorial papers in the above-mentioned areas, and state-of-the-art papers on various aspects of computer systems and applications.
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