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Differentiated: segmentation for improved learning strategies

, &
Pages 155-174 | Received 19 Sep 2019, Accepted 24 Apr 2020, Published online: 24 May 2020
 

ABSTRACT

Higher education has historically focused on demographics to target prospective students in recruitment and retention efforts. This study focuses on the effect of psychographic and behavioral elements at the learner level to identify student segments and to influence the outcomes that lead to retention and ultimately graduation. Psychographics that include several motivation, resource, and demographic variables were used to segment 245 undergraduate college students from a four year medium size AACSB accredited state school in the United States. Results from a Hierarchical Cluster Analysis identify four segments that differ significantly in terms of not only motivation, resource, and demographic variables but also outcome variables such as academic achievement, satisfaction, and university loyalty. Findings suggest students to be heterogeneous needing different interventions targeted to different student groups. Discussion includes implications for students, instructors, and administrators, as well as actions that may positively influence retention, and graduation efforts among different student segments.

Disclosure statement

No potential conflict of interest was reported by the author(s).

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