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Buche, Mari W.; Davis, Larry R.; Vician, Chelley – Journal of Information Systems Education, 2012
Prior research suggests that individuals' technology acceptance levels may affect their work and learning performance outcomes when activities are conducted through information technology usage. Most previous research investigating the relationship between individual attitudes towards technology and learning has been conducted in…
Descriptors: Influence of Technology, Electronic Learning, Technology Uses in Education, Performance Factors
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Al-Busaidi, Kamla Ali; Al-Shihi, Hafedh – Journal of Computing in Higher Education, 2012
Learning Management System (LMS) enables institutions to administer their educational resources, and support their traditional classroom education and distance education. LMS survives through instructors' continuous use, which may be to a great extent associated with their satisfaction of the LMS. Consequently, this study examined the key factors…
Descriptors: Blended Learning, Distance Education, Intention, Educational Technology
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Sun, Jerry Chih-Yuan; Rueda, Robert – British Journal of Educational Technology, 2012
This study investigates possible relationships among motivational and learning variables (interest, self-efficacy and self-regulation) and three types of student engagement (behavioural engagement, emotional engagement and cognitive engagement) in a distance education setting. Participants were 203 students enrolled in online classes in the fall…
Descriptors: Learner Engagement, Electronic Learning, Self Efficacy, Gerontology
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Galy, Edith; Downey, Clara; Johnson, Jennie – Journal of Information Technology Education, 2011
Creating an integrative research framework that extends a model frequently used in the Information Systems field, the Technology Acceptance Model, together with variables used in the Education field, this empirical study investigates the factors influencing student performance as reflected by their final course grade. The Technology Acceptance…
Descriptors: Electronic Learning, Self Efficacy, Academic Achievement, Online Courses
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Gibson, Shanan G.; Harris, Michael L.; Colaric, Susan M. – Journal of Education for Business, 2008
The authors surveyed faculty from a college of business and a college of education regarding their attitudes toward online education. Results of the survey were examined to determine the degree to which the technology acceptance model was able to adequately explain faculty acceptance of online education. Results indicate that perceived usefulness…
Descriptors: Educational Technology, Internet, Teacher Attitudes, Computer Attitudes
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Sahin, Ismail; Shelley, Mack – Educational Technology & Society, 2008
In the current study, the Distance Education Student Satisfaction Model, estimated as a structural equation model, is proposed to understand better what predicts student satisfaction from online learning environments. In the present study, the following variables are employed based on the Technology Acceptance Model (TAM) (Davis, Bagozzi, &…
Descriptors: Undergraduate Students, Student Attitudes, Distance Education, Online Courses
Gurbuz, Tarkan; Yildirim, I. Soner; Ozden, M. Yasar – 2000
This study examined the effect of two computer literacy courses (one was offered online, and the other was offered through traditional methods) at the Middle East Technical University (Turkey). The two courses were compared in terms of their effectiveness on computer attitudes of student-teachers. The study also explored the other factors that…
Descriptors: Attitude Change, Case Studies, Comparative Analysis, Computer Attitudes
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Contreras, Carlos L. M. – Quarterly Review of Distance Education, 2004
Demographic and personality variables and computer use were used to predict computer self-confidence with a sample of students enrolled in online college-credit classes. Computer self-confidence was measured with one 10-choice question. Demographic variables included age, annual income, geographic region, gender, and ethnicity. Computer use was…
Descriptors: Income, Age Differences, Ethnic Groups, Gender Differences