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Learning Analytics or Educational Data Mining? This is the Question...

机译:学习分析还是教育数据挖掘?这是问题...

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In full expansion, a vital area such as education could not remain indifferent to the use of information and communication technology. Over the past two decades we have witnessed the emergence and development of e-learning systems, the proliferation of MOOCs, and generally the rise of Technology Enhanced Education. All of these contributed to generation and storage of unprecedented volumes of data concerning all areas of learning.At the same time, domains such as data mining and big data analytics have emerged and developed. Their applications in education have spawned new areas of research such as educational data mining or learning analytics.As an interdisciplinary research area Educational Data Mining (EDM) aims to explore data from educational environment to build models based on which students' behavior and results are better understood. In fact, EDM is a complex process that consists of a few steps grouped in three stages: data preprocessing, modelling and postprocessing. It transforms raw data from educational environments in useful information that could influence in a positive way the educational process.According to Society for Learning Analytics Research (SoLAR) which took over the wording of the first International Conference on Learning Analytics and Knowledge, learning analytics is ”the measurement, collection, analysis and reporting of data about learners and their contexts for purposes of understanding and optimizing learning and the environments in which it occurs” (Siemens, 2011).This paper proposes a comparative study of the two concepts: EDM and learning analytics.Due to certain voices in the scientific environment that claim that the two terms refer to the same thing, we want to emphasize the similarities and differences between them, and how each one can serve to raise the quality in educational processes.
机译:在全面扩展中,诸如教育之类的重要领域不能对信息和通信技术的使用无动于衷。在过去的二十年中,我们目睹了电子学习系统的出现和发展,MOOC的激增以及总体上技术增强教育的兴起。所有这些都有助于生成和存储涉及学习各个领域的前所未有的数据量。与此同时,诸如数据挖掘和大数据分析之类的领域也应运而生。它们在教育中的应用催生了新的研究领域,例如教育数据挖掘或学习分析。作为跨学科研究领域,教育数据挖掘(EDM)旨在探索教育环境中的数据,以建立模型,从而使学生的行为和结果更好了解。实际上,EDM是一个复杂的过程,由几个步骤组成,这些步骤分为三个阶段:数据预处理,建模和后处理。它将来自教育环境的原始数据转换成有用的信息,这些信息可能以积极的方式影响教育过程。根据学习分析协会(SoLAR)接管了第一届国际学习分析和知识会议的措辞,学习分析是“为了了解和优化学习及其发生的环境,对学习者及其背景的数据进行测量,收集,分析和报告”(Siemens,2011年)。本文提出了对这两个概念的比较研究:EDM和学习分析:由于科学环境中的某些声音声称这两个术语指的是同一事物,因此我们想强调它们之间的相似性和差异性,以及每个要素如何可以用来提高教育过程的质量。

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