利用数据挖掘收集学生信息行为的情报

IF 0.3 4区 管理学 Q4 INFORMATION SCIENCE & LIBRARY SCIENCE Library Trends Pub Date : 2020-10-21 DOI:10.1353/lib.2020.0015
Lei Pan, N. Patterson, Sophie McKenzie, Surtharshan Rajasegarar, G. Wood-Bradley, J. Rough, Wei Luo, E. Lanham, Jo Coldwell-Neilson
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引用次数: 1

摘要

摘要:在本文中,我们提出了一种新的机器学习方法,通过分析学生在教学期间的评估分数来预测他们的期末考试成绩。世界上许多大学面临的一个挑战是,尽早识别出有可能不及格的学生,以便提供积极的干预措施,以最大限度地降低由于(大)数据量等多种原因导致的不及格风险。我们提出了一种使用机器学习的数据驱动策略,机器学习是人工智能的一种应用,通过结合统计学和计算机科学的策略和过程,从数据中提取知识,这已经变得很流行。通过提前预测学生的考试成绩,可以进行干预,老师可以为学生提供额外的支持,帮助他们取得最好的成绩。在这项研究中,我们从澳大利亚一所大学的一门受欢迎的信息技术学科收集数据,并对数据应用机器学习算法来预测几百名学生的考试成绩。我们还制定了一个学习支持活动的框架,使有风险的学生在考试前获得最大的影响。我们发现,通过我们的方法,我们可以准确地预测20%到30%的学生处于危险之中,使一大群学生能够通过我们的干预框架得到帮助,我们相信这可以对他们未来的结果产生积极的影响。
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Gathering Intelligence on Student Information Behavior Using Data Mining
Abstract:In this paper, we present a novel machine-learning approach that analyzes student assessment scores across a teaching period to predict their final exam performance. One challenge for many universities around the world is identifying the students who are at risk of failing a subject sufficiently early enough to provide proactive interventions that aim to minimize the risk of failure due to several reasons such as the volume of (big) data. We propose a data-driven strategy using machine learning, an application of artificial intelligence that has become popular for extracting knowledge from data by combining strategies and processes from statistics and computer science. By being able to predict what a student's exam performance is ahead of time, interventions can occur, and students can be provided with extra support from their teachers to aid them in achieving the best result possible. In this research, we collected data from a popular information-technology subject at an Australian university and applied a machine-learning algorithm to the data to predict a few hundred students' exam scores. We also developed a framework of learningsupport activities that would be of most benefit to at-risk students to achieve maximum impact before their exam would be conducted. We discovered through our approach that we can accurately predict the bottom 20–30 percent of students at risk, enabling a large cohort of students to be helped through our intervention framework, which we believe can have a positive impact on their future results.
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来源期刊
Library Trends
Library Trends INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
1.20
自引率
12.50%
发文量
0
期刊介绍: Library Trends, issued quarterly and edited by F. W. Lancaster, explores critical trends in professional librarianship, including practical applications, thorough analyses, and literature reviews. Both practicing librarians and educators use Library Trends as an essential tool in their professional development and continuing education. Each issue is devoted to a single aspect of professional activity or interest. In-depth, thoughtful articles explore important facets of the issue topic. Every year, Library Trends provides breadth, covering a wide variety of themes, from special libraries to emerging technologies. An invaluable resource to practicing librarians and educators, the journal is an important tool that is utilized for professional development and continuing education.
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