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Koroghlanian, Carol M.; Brinkerhoff, Jonathan – Journal of Educational Technology Systems, 2008
Learner analysis and needs assessments are basic elements of all instructional design models and are of concern to those designing distance education courses. This investigation surveyed 249 geographically dispersed online students' computer skills and attitudes toward Internet-delivered instruction. Results were assessed by demographics. Results…
Descriptors: Computer Uses in Education, Educational Technology, Internet, Graduate Students
Norum, Pamela S.; Weagley, Robert O. – Journal of Educational Technology Systems, 2007
The Internet has experienced phenomenal growth in higher education. In addition to many pedagogical benefits, there are potential risks to the student users, including identity theft. This study examined the extent to which selected online practices that could minimize the risk of financial identity theft are used by college students. Data were…
Descriptors: College Students, Risk, Multivariate Analysis, Internet

Mackowiak, Kate – Journal of Educational Technology Systems, 1989
Describes study that investigated the impact of individual differences on deaf college students' attitudes toward computers at Gallaudet University. The impact of age, gender, computer experience, and major are examined, and results indicate a strong correlation between computer experience level and attitudes. (22 references) (Author/LRW)
Descriptors: Age Differences, Analysis of Variance, Computer Literacy, Correlation