Examination of interaction variables as predictors of students' satisfaction and willingness to enroll in future Web-based courses while controlling for student characteristics
DISSERTATION
Veronica A. Thurmond, University of Kansas, United States
University of Kansas . Awarded
Abstract
The impetus for this study was the need to gain a better understanding of what interaction activities in the virtual classroom affect student outcomes. The purpose was to determine which perceptions of interactions contributed to predicting student outcomes of satisfaction and future enrollment in Web-based courses—while controlling for student characteristics. The problem is that the interaction that occurs in the Web-based classroom is markedly different than what occurs in the traditional classroom setting.
The study was a secondary analysis using data from 388 student evaluations of Web-based courses. Using Astin's Input-Environment-Outcome (I-E-O) conceptual framework, influences of student characteristics [inputs] and virtual classroom interactions [environment] on student outcomes were examined. Student input predictors were perceptions of computer skills; knowledge of electronic communications; number of Web-based courses taken; distance living from campus; and age. Environmental predictors included interactions with the instructor, students, technology, and perceptions of presence.
Hierarchical, multiple regression analyses were performed to answer two research questions: (1) Do students' self-reported ratings of interaction help predict their satisfaction n a Web-based course, while controlling for student characteristics? (2) Do students' self-reported ratings of interaction help explain their willingness to take another Web-based course, while controlling for student characteristics?
The most significant predictor of both student outcomes was students' perceptions regarding their interaction with their instructors. Second, satisfaction and enrollment were affected by students' perception of the technology as contributing to wasted time. Third, students who did not miss the face-to-face interactions as much tended to be more satisfied and were willing to take other online courses. Finally, information on distance living from campus helped in predicting satisfaction and likelihood of enrolling in other similar courses. These four variables contributed 72% of the variance in predicting satisfaction and 60% in likelihood of enrolling in future online courses.
The overall regression findings supported the need to examine student characteristics and the educational environment when assessing student outcomes. Findings provided support for the idea that the interaction activities that occur in a Web-based environment—not student characteristics—have a greater impact on students' satisfaction and likelihood of enrolling in other online courses.
Citation
Thurmond, V.A. Examination of interaction variables as predictors of students' satisfaction and willingness to enroll in future Web-based courses while controlling for student characteristics. Ph.D. thesis, University of Kansas. Retrieved May 19, 2022 from https://www.learntechlib.org/p/122427/.

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