Assessing readiness for online education - Research models for identifying students at risk

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Abstract

This study explored the interaction between student characteristics and the online environment in predicting course performance and subsequent college persistence among students in a large urban U.S. university system. Multilevel modeling, propensity score matching, and the KHB decomposition method were used. The most consistent pattern observed was that native-born students were at greater risk online than foreign-born students, relative to their face-to-face outcomes. Having a child under 6 years of age also interacted with the online medium to predict lower rates of successful course completion online than would be expected based on face-to-face outcomes. In addition, while students enrolled in online courses were more likely to drop out of college, online course outcomes had no direct effect on college persistence; rather other characteristics seemed to make students simultaneously both more likely to enroll online and to drop out of college.

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Wladis, C., Conway, K. M., & Hachey, A. C. (2016). Assessing readiness for online education - Research models for identifying students at risk. Online Learning Journal, 20(3), 97–109. https://doi.org/10.24059/olj.v20i3.980

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