Self-regulated learning strategies predict learner behavior and goal attainment in Massive Open Online Courses.
Computers & Education(2017)
摘要
Individuals with strong self-regulated learning (SRL) skills, characterized by the ability to plan, manage and control their learning process, can learn faster and outperform those with weaker SRL skills. SRL is critical in learning environments that provide low levels of support and guidance, as is commonly the case in Massive Open Online Courses (MOOCs). Learners can be trained to engage in SRL and actively supported with prompts and activities. However, effective implementation of learner support systems in MOOCs requires an understanding of which SRL strategies are most effective and how these strategies manifest in online behavior. Moreover, identifying learner characteristics that are predictive of weaker SRL skills can advance efforts to provide targeted support without obtrusive survey instruments. We investigated SRL in a sample of 4,831 learners across six MOOCs based on individual records of overall course achievement, interactions with course content, and survey responses. We found that goal setting and strategic planning predicted attainment of personal course goals, while help seeking was associated with lower goal attainment. Learners with stronger SRL skills were more likely to revisit previously studied course materials, especially course assessments. Several learner characteristics, including demographics and motivation, predicted learners' SRL skills. We discuss implications for theory and the development of learning environments that provide adaptive support. Goal setting and strategic planning positively predict goal attainment in MOOCs.Help seeking negatively predicts goal attainment, e.g., earning a certificate.Self-reported SRL strategies manifest behaviorally in revisiting course content.Learner characteristics (demographics, motivation, etc.) predict self-reported SRL.
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关键词
Online learning,Learning analytics,Individual differences,Self-regulated learning,Massive open online course
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