Abstract
The review of research on attrition commences with research on face-to-face teaching. Early research on entry characteristics and their relationship to attrition was discredited, as it was found that such variables predicted little of the variance in retention and success. Instead, research concentrated on develo** models which took into account what occurred during the course of study. The most highly cited is the model of Tinto, which posited that retention was promoted through students becoming socially and academically integrated with the college community, through student–student and student–teacher interaction on-campus. It has been found difficult to translate this influential research into the context of online teaching, as it lacks the direct student–student and student–teacher contact which provides the integrative mechanism. The chapter concludes by reviewing research into virtual communities in online learning.
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Kember, D., Fan, S. (2023). Review of Literature on Attrition. In: Kember, D., Ellis, R.A., Fan, S., Trimble, A. (eds) Adapting to Online and Blended Learning in Higher Education. Springer, Singapore. https://doi.org/10.1007/978-981-99-0898-1_9
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