TY - CHAP
T1 - Learning Analytics and societal challenges
T2 - Capturing value for education and learning
AU - Muukkonen, Hanni
AU - van Leeuwen, Anouschka
AU - Gašević, Dragan
N1 - Publisher Copyright:
© 2024 selection and editorial matter, Crina Damşa, Antti Rajala, Giuseppe Ritella and Jasperina Brouwer; individual chapters, the contributors.
PY - 2023/9/22
Y1 - 2023/9/22
N2 - A complex challenge for the society is to offer equal learning opportunities at various life stages and to support students, teachers, and institutions in their various tasks and roles related to learning and teaching. Learning analytics (LA) provides an opportunity to address these societal challenges. As the LA field matures, tool development is aimed at aiding informed human decision-making and combating inequalities. For example, detecting students at risk of dropping out or supporting self-regulated learning. The inception of LA was catalysed by an increasing amount of available data and what could be done with these data to improve learner support and teaching. Simultaneously, an increase in the computational power, machine learning methods, and tools at hand offer renewing affordances to analyse and visualise data both retrospectively and for predictive purposes. Employing LA as a solution also brings potential problems, such as unequal treatment, privacy concerns, and unethical practices. Through selected example cases, this chapter presents and addresses these potentials and risks.
AB - A complex challenge for the society is to offer equal learning opportunities at various life stages and to support students, teachers, and institutions in their various tasks and roles related to learning and teaching. Learning analytics (LA) provides an opportunity to address these societal challenges. As the LA field matures, tool development is aimed at aiding informed human decision-making and combating inequalities. For example, detecting students at risk of dropping out or supporting self-regulated learning. The inception of LA was catalysed by an increasing amount of available data and what could be done with these data to improve learner support and teaching. Simultaneously, an increase in the computational power, machine learning methods, and tools at hand offer renewing affordances to analyse and visualise data both retrospectively and for predictive purposes. Employing LA as a solution also brings potential problems, such as unequal treatment, privacy concerns, and unethical practices. Through selected example cases, this chapter presents and addresses these potentials and risks.
UR - http://www.scopus.com/inward/record.url?scp=85173390513&partnerID=8YFLogxK
U2 - 10.4324/9781003205838-15
DO - 10.4324/9781003205838-15
M3 - Chapter
AN - SCOPUS:85173390513
SN - 9781032071879
SP - 216
EP - 233
BT - Re-Theorising Learning And Research Methods In Learning Research
PB - Taylor & Francis
ER -