TY - JOUR
T1 - Intelligent learning analytics dashboards
T2 - automated drill-down recommendations to support teacher data exploration
AU - Khosravi, Hassan
AU - Shabaninejad, Shiva
AU - Bakharia, Aneesha
AU - Sadiq, Shazia
AU - Indulska, Marta
AU - Gašević, Dragan
N1 - Publisher Copyright:
© 2021, UTS ePRESS. All rights reserved.
PY - 2021/12/15
Y1 - 2021/12/15
N2 - Learning analytics dashboards commonly visualize data about students with the aim of helping students and educators understand and make informed decisions about the learning process. To assist with making sense of complex and multidimensional data, many learning analytics systems and dashboards have relied strongly on AI algorithms based on predictive analytics. While predictive models have been successful in many domains, there is an increasing realization of the inadequacies of using predictive models in decision-making tasks that affect individuals without human oversight. In this paper, we employ a suite of state-of-the-art algorithms, from the online analytics processing, data mining, and process mining domains, to present an alternative human-in-the-loop AI method to enable educators to identify, explore, and use appropriate interventions for subpopulations of students with the highest deviation in performance or learning process compared to the rest of the class. We demonstrate an application of our proposed approach in an existing learning analytics dashboard (LAD) and explore the recommended drill-downs in a course with 875 students. The demonstration provides an example of the recommendations from real course data and shows how recommendations can lead the user to interesting insights. Furthermore, we demonstrate how our approach can be employed to develop intelligent LADs.
AB - Learning analytics dashboards commonly visualize data about students with the aim of helping students and educators understand and make informed decisions about the learning process. To assist with making sense of complex and multidimensional data, many learning analytics systems and dashboards have relied strongly on AI algorithms based on predictive analytics. While predictive models have been successful in many domains, there is an increasing realization of the inadequacies of using predictive models in decision-making tasks that affect individuals without human oversight. In this paper, we employ a suite of state-of-the-art algorithms, from the online analytics processing, data mining, and process mining domains, to present an alternative human-in-the-loop AI method to enable educators to identify, explore, and use appropriate interventions for subpopulations of students with the highest deviation in performance or learning process compared to the rest of the class. We demonstrate an application of our proposed approach in an existing learning analytics dashboard (LAD) and explore the recommended drill-downs in a course with 875 students. The demonstration provides an example of the recommendations from real course data and shows how recommendations can lead the user to interesting insights. Furthermore, we demonstrate how our approach can be employed to develop intelligent LADs.
KW - Drill-down analysis
KW - Intelligent dashboards
KW - Learning analytics dashboards
KW - Process mining in education
UR - https://www.scopus.com/pages/publications/85122214166
U2 - 10.18608/jla.2021.7279
DO - 10.18608/jla.2021.7279
M3 - Article
AN - SCOPUS:85122214166
SN - 1929-7750
VL - 8
SP - 133
EP - 154
JO - Journal of Learning Analytics
JF - Journal of Learning Analytics
IS - 3
ER -