DATA MINING ALGORITHMS FOR PREDICTION OF STUDENT TEACHERS’ PERFORMANCE IN ICT: A SYSTEMATIC LITERATURE REVIEW

IF 0.5 Q4 EDUCATION & EDUCATIONAL RESEARCH
Juma Habibu Shindo, Mohamedi Mohamedi Mjahidi, Mohamed Dewa Waziri
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引用次数: 0

Abstract

Poor ICT performance in teacher training colleges makes it more difficult for the majority of teachers to successfully use ICT resources in their teaching and learning. When teachers can efficiently utilize ICT resources, it empowers them to update their knowledge through online learning, consequently enhancing the overall quality of teaching and learning. This positive outcome can be observed through improved ICT performance. The aim of this article is to identify the appropriate Data Mining algorithms for predicting student teachers’ performance in ICT. The systematic literature review that was guided by the PRISMA statement 2020 served as the study methodology. It makes for clear reporting and offers a detailed checklist and flow diagram that direct the review procedure. On November 6, 2022, about 196 scholarly articles were downloaded from three digital libraries: Science Direct (38), ACM Digital Library (72), IEEE Xplore (51), and 35 from the Google Scholar search engine. After screening and eligibility checking, 28 scholarly articles were selected and analysed through content analysis in terms of the most commonly used algorithms, the year of publication, the study purposes, and the accuracy performance metrics. Considering the specific study findings represented quantitatively, Decision Trees and Naive Bayes were found to be the most commonly used Data Mining algorithms, with a count of 20.6% each. The most recently identified articles were published between 2014 and 2022. In terms of study purposes, a large number of studies focused on predicting student performance. Furthermore, about 6 out of 8 algorithms used in previous studies were found to score 80% or above in the average percentage of the highest and lowest accuracy metrics. Therefore, considering the general findings, the study identified five Data Mining algorithms as appropriate and most commonly used for prediction of student teachers’ performance in ICT. They are Naive Bayes, K-Nearest Neighbour, Support Vector Machine, Random Forest, and Decision Tree. The findings of this study would assist the government, college tutors, and student teachers in making better decisions to improve ICT performance for pre-service and in-service teachers.
信息通信技术中预测见习教师绩效的数据挖掘算法:系统的文献综述
教师培训院校的ICT绩效不佳,使得大多数教师难以成功地在教学中使用ICT资源。当教师能够有效地利用信息通信技术资源时,它使他们能够通过在线学习更新知识,从而提高教学的整体质量。这一积极成果可以通过信息通信技术绩效的提高来观察到。本文的目的是确定适当的数据挖掘算法来预测学生教师在ICT中的表现。以2020年PRISMA声明为指导的系统文献综述作为研究方法。它提供了清晰的报告,并提供了详细的检查表和流程图来指导审查过程。截至2022年11月6日,约有196篇学术文章从三个数字图书馆下载:Science Direct(38篇)、ACM数字图书馆(72篇)、IEEE Xplore(51篇)和来自Google Scholar搜索引擎的35篇。经过筛选和资格检查,选取28篇学术论文,并根据最常用算法、发表年份、研究目的和准确性性能指标进行内容分析。考虑到定量表示的具体研究结果,发现决策树和朴素贝叶斯是最常用的数据挖掘算法,各占20.6%。最近确认的文章发表于2014年至2022年之间。在研究目的上,大量的研究集中在预测学生的表现上。此外,在之前的研究中使用的8种算法中,约有6种算法在最高和最低精度指标的平均百分比中得分为80%或以上。因此,考虑到一般的发现,研究确定了五种数据挖掘算法是最合适的,也是最常用的,用于预测学生教师在ICT中的表现。它们是朴素贝叶斯、k近邻、支持向量机、随机森林和决策树。本研究结果可协助政府、大学导师及实习教师制定更佳决策,以提升职前及在职教师的资讯科技绩效。
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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来源期刊
Information Technologies and Learning Tools
Information Technologies and Learning Tools EDUCATION & EDUCATIONAL RESEARCH-
自引率
50.00%
发文量
89
审稿时长
40 weeks
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