
Networks in Learning Analytics: Where Theory, Methodology, and Practice Intersect
Author(s) -
Bodong Chen,
Oleksandra Poquet
Publication year - 2022
Publication title -
journal of learning analytics
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 1.084
H-Index - 7
ISSN - 1929-7750
DOI - 10.18608/jla.2022.7697
Subject(s) - learning analytics , rigour , data science , analytics , computer science , software analytics , educational technology , learning sciences , big data , cultural analytics , knowledge management , semantic analytics , world wide web , psychology , mathematics education , epistemology , the internet , data mining , software construction , philosophy , software , software system , web modeling , programming language
Network analysis has contributed to the emergence of learning analytics. In this editorial, we briefly introduce network science as a field and situate it within learning analytics. Drawing on the Learning Analytics Cycle, we highlight that effective application of network science methods in learning analytics involves critical considerations of learning processes, data, methods and metrics, and interventions, as well as ethics and value systems surrounding these areas. Careful work must meaningfully situate network methods and interventions within the theoretical assumptions explaining learning, as well as within pedagogical and technological factors shaping learning processes. The five empirical papers in the special section demonstrate diverse applications of network analysis, and the invited commentaries from cognitive network science and physics education research further discuss potential synergies between learning analytics and other sister fields with a shared interest in leveraging network science. We conclude by discussing opportunities to strengthen the rigour of network-based learning analytics projects, expand current work into nascent areas, and achieve more impact by holistically addressing the full cycle of learning analytics.