2022
DOI: 10.19173/irrodl.v22i4.5401
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Using Educational Data Mining Techniques to Identify Profiles in Self-Regulated Learning: An Empirical Evaluation

Abstract: With the increased emphasis on the benefits of self-regulated learning (SRL), it is important to make use of the huge amounts of educational data generated from online learning environments to identify the appropriate educational data mining (EDM) techniques that can help explore and understand online learners’ behavioral patterns. Understanding learner behaviors helps us gain more insights into the right types of interventions that can be offered to online learners who currently receive limited support from i… Show more

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Cited by 21 publications
(15 citation statements)
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“…Most scholars believe that the characteristics of current crimes committed by university students are increasing in number, diverse types, highly intelligent and brutal crime methods, and the expansion of the subjects involved in crimes [13] argues that "college students' crimes present characteristics such as the young age of the offender, impulsiveness, extreme ego and individualism, concentration of crimes in property and violence type, clear purpose of committing crimes, and simple motives for committing crimes." [14] summarises the characteristics of crime among university students as: diversity, passion, high intelligence, and cruelty. [15] argues that, "College students are socially inclined to commit crimes.…”
Section: Review Of the Literaturementioning
confidence: 99%
“…Most scholars believe that the characteristics of current crimes committed by university students are increasing in number, diverse types, highly intelligent and brutal crime methods, and the expansion of the subjects involved in crimes [13] argues that "college students' crimes present characteristics such as the young age of the offender, impulsiveness, extreme ego and individualism, concentration of crimes in property and violence type, clear purpose of committing crimes, and simple motives for committing crimes." [14] summarises the characteristics of crime among university students as: diversity, passion, high intelligence, and cruelty. [15] argues that, "College students are socially inclined to commit crimes.…”
Section: Review Of the Literaturementioning
confidence: 99%
“…It has different features including chats, emails, wikis, forums, assignments, quizzes and blogs. These features allow learners to be able to be active while achieving effective learning and engagement (Araka et al, 2021). Furthermore, the LMS features assist in improving self-regulated learning.…”
Section: Lms Featuresmentioning
confidence: 99%
“…Among other things, trace data measuring the average session length, and the number of weeks the student spent at least 48 minutes studying were successfully used to build an early warning system for students prone to failing the course. Learning analytics has also been used to cluster students based on the extent to which they displayed self‐regulating behaviour (Araka et al, 2022; Kim et al, 2018). Kim et al (2018) used indicators of help‐seeking, time‐investment, and study regularity to successfully group students into self‐regulated, partially self‐regulated, and non‐self‐regulated students.…”
Section: Literature Reviewmentioning
confidence: 99%