Educational Data Mining and Learning Analytics: differences, similarities, and time evolution

Main Article Content

Laura Calvet Liñán
Ángel Alejandro Juan Pérez
Technological progress in recent decades has enabled people to learn in different ways. Universities now have more educational models to choose from, i.e., b-learning and e-learning. Despite the increasing opportunities for students and instructors, online learning also brings challenges due to the absence of direct human contact. Online environments allow the generation of large amounts of data related to learning/teaching processes, which offers the possibility of extracting valuable information that may be employed to improve students’ performance. In this paper, we aim to review the similarities and differences between Educational Data Mining and Learning Analytics, two relatively new and increasingly popular fields of research concerned with the collection, analysis, and interpretation of educational data. Their origins, goals, differences, similarities, time evolution, and challenges are addressed, as are their relationship with Big Data and MOOCs.
Keywords
online learning, Educational Data Mining, Learning Analytics, Big Data

Article Details

How to Cite
Calvet Liñán, Laura; and Juan Pérez, Ángel Alejandro. “Educational Data Mining and Learning Analytics: differences, similarities, and time evolution”. RUSC, Universities & Knowledge Society, vol.VOL 12, no. 3, pp. 98-112, doi:10.7238/rusc.v12i3.2515.
Author Biographies

Laura Calvet Liñán, PhD Student, IN3 – Open University of Catalonia (UOC), Spain

Laura Calvet Liñán is a member of the Distributed, Parallel and Collaborative Systems (DPCS), and the Smart Logistics and Production research groups. She has been a PhD Student at the IN3 – UOC since October 2014. Her background is in Applied Statistics and Economics. She is interested in statistical and machine-learning applications and mathematical programming. Currently, she is exploring the combination of statistical learning and simheuristics for solving complex combinatorial optimization problems under uncertainty.

Computer Science, Multimedia and Telecommunication Dept.

Open University of Catalonia (UOC)

Rambla del Poblenou, 156

08018 Barcelona

Spain

Ángel Alejandro Juan Pérez, Associate Professor of Operations Research, Computer Science Department, Open University of Catalonia (UOC), Spain

Dr Angel Alejandro Juan Pérez holds a PhD in Applied Computational Mathematics. He completed a pre-doctoral internship at Harvard University and a postdoctoral internship at the MIT Center for Transportation and Logistics. He has been a research fellow at the University of Southampton (United Kingdom), LAAS-CNRS (France), the University of Natural Resources and Life Sciences (Austria) and the University of Portsmouth (United Kingdom). His research interests include applications of randomized algorithms and simheuristics in logistics, production and Internet computing. He has published over 150 peer-reviewed papers in these fields. His website address is http://ajuanp.wordpress.com.

Computer Science, Multimedia and Telecommunication Dept.

Open University of Catalonia (UOC)

Rambla del Poblenou, 156

08018 Barcelona

Spain