“…It has also been shown that effective feedback and action recommendations are essential for self-regulated learning (SRL) and are significantly correlated with students’ learning and performance ( Algayres and Triantafyllou 2020 ). Therefore, to address these challenges, a number of studies within the fields of learning analytics (LA), artificial intelligence in education (AIED) and educational data mining (EDM) have investigated how students’ self-regulation could be supported through, for instance, dashboards that provide predictive student performance ( Lakkaraju et al, 2015 ; Johnson et al, 2015 ; Kim et al, 2016 ; Marbouti et al, 2016 ; Akhtar et al, 2017 ; Chanlekha and Niramitranon 2018 ; Choi et al, 2018 ; Howard et al, 2018 ; Nguyen et al, 2018 ; Predić et al, 2018 ; Villamañe et al, 2018 ; Xie et al, 2018 ; Baneres et al, 2019 ; Bennion et al, 2019 ; Rosenthal et al, 2019 ; Nouri et al, 2019 ; D.). These studies employed various data mining, machine learning (ML), clustering and visualisation techniques on a diverse variety of learning management system (LMS) data sources to predict student success and failure in a course or in an entire academic year.…”