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Behind the scenes of educational data mining

机译:在教育数据挖掘的场景后面

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Research based on educational data mining conducted at academic institutions is often limited by the institutional policy with regard to the type of learning management system and the detail level of its activity reports. Often, researchers deal with only raw data. Such data normally contain numerous fictitious user activities that can create a bias in the activity trends, consequently leading to inaccurate conclusions unless careful strategies for data cleaning, filtering, and indexing are applied. In addition, pre-processing phases are not always reported in detail in the scientific literature. As educational data mining and learning analytics methodologies become increasingly popular in educational research, it is important to promote researchers and educational policymakers' awareness of the pre-processing phase, which is essential to create a reliable database prior to any analysis. This phase can be divided into four consecutive pre-processing stages: data gathering, data interpretation, database creation, and data organization. Taken together, these stages stress the technical and cooperative nature of this type of research, and the need for careful interpretation of the studied parameters. To illustrate these aspects, we applied these stages to online educational data collected from several chemistry courses conducted at two academic institutions. Our results show that adequate pre-processing of the data can prevent major inaccuracies in the research findings, and significantly increase the authenticity and reliability of the conclusions.
机译:基于学术机构进行的教育数据采矿的研究通常受到学习管理系统类型的机构政策和其活动报告的细节水平的限制。通常,研究人员只处理原始数据。此类数据通常包含许多虚拟用户活动,可以在活动趋势中创建偏差,从而导致结论不准确,除非应用数据清洁,过滤和索引的仔细策略。此外,在科学文献中并不总是详细报道预处理阶段。随着教育数据挖掘和学习分析方法在教育研究中越来越受欢迎,重要的是促进研究人员和教育政策制定者对预处理阶段的认识,这对于在任何分析之前创建可靠的数据库至关重要。该阶段可以分为四个连续的预处理阶段:数据收集,数据解释,数据库创建和数据组织。连同,这些阶段强调了这种研究的技术和合作性质,需要仔细解释研究的参数。为了说明这些方面,我们将这些阶段应用于来自两项学术机构的几个化学课程中收集的在线教育数据。我们的研究结果表明,充足的数据预处理可以防止研究结果中的主要不准确性,并显着提高结论的真实性和可靠性。

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