挖掘教育大数据:机遇与挑战

IF 2.4 1区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH
Christian Fischer, Z. Pardos, R. Baker, J. Williams, P. Smyth, Renzhe Yu, Stefan Slater, Rachel B. Baker, M. Warschauer
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引用次数: 159

摘要

大数据在教育领域的出现催生了新的数据驱动方法,以支持明智的决策和提高教育效率的努力。学生行为的数字痕迹保证了对学习过程的更可扩展和更细粒度的理解和支持,而以前使用传统的数据源和方法获得这些数据的成本太高。这篇综合综述描述了微观层面(如点击流数据)、中观层面(如文本数据)和宏观层面(如机构数据)大数据的功能和应用。例如,点击流数据通常用于操作和理解知识、认知策略和行为过程,以个性化和增强教学和学习。学生写作的语料库通常使用自然语言处理技术进行分析,以将语言特征与认知、社会、行为和情感过程联系起来。机构数据通常用于通过课程指导系统和预警系统改善学生和行政决策。此外,本章概述了访问、分析和使用大数据的当前挑战。这些挑战包括平衡数据隐私和保护与数据共享和研究,培训研究人员的教育数据科学方法,以及导航解释和预测之间的紧张关系。我们认为,考虑到挖掘教育大数据的潜在好处,解决这些挑战是值得的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Big Data in Education: Affordances and Challenges
The emergence of big data in educational contexts has led to new data-driven approaches to support informed decision making and efforts to improve educational effectiveness. Digital traces of student behavior promise more scalable and finer-grained understanding and support of learning processes, which were previously too costly to obtain with traditional data sources and methodologies. This synthetic review describes the affordances and applications of microlevel (e.g., clickstream data), mesolevel (e.g., text data), and macrolevel (e.g., institutional data) big data. For instance, clickstream data are often used to operationalize and understand knowledge, cognitive strategies, and behavioral processes in order to personalize and enhance instruction and learning. Corpora of student writing are often analyzed with natural language processing techniques to relate linguistic features to cognitive, social, behavioral, and affective processes. Institutional data are often used to improve student and administrational decision making through course guidance systems and early-warning systems. Furthermore, this chapter outlines current challenges of accessing, analyzing, and using big data. Such challenges include balancing data privacy and protection with data sharing and research, training researchers in educational data science methodologies, and navigating the tensions between explanation and prediction. We argue that addressing these challenges is worthwhile given the potential benefits of mining big data in education.
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来源期刊
Review of Research in Education
Review of Research in Education EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
15.70
自引率
0.00%
发文量
14
期刊介绍: Review of Research in Education (RRE), published annually since 1973 (approximately 416 pp./volume year), provides an overview and descriptive analysis of selected topics of relevant research literature through critical and synthesizing essays. Articles are usually solicited for specific RRE issues. There may also be calls for papers. RRE promotes discussion and controversy about research problems in addition to pulling together and summarizing the work in a field.
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