Publication | Closed Access
Testing a model to predict online cheating—Much ado about nothing
67
Citations
17
References
2014
Year
EngineeringOnline ExperimentEducationOn-line TestingCommunicationStudent OutcomeOnline Cheating—much AdoOnline TestingStatisticsPredictive AnalyticsEducational TestingComputer ScienceEducational StatisticsHigher EducationStudent AssessmentSoftware TestingFaculty OpinionsHuman Capital VariablesHigher Education AssessmentEducational AssessmentDeception Detection
Much has been written about student and faculty opinions on academic integrity in testing. Currently, concerns appear to focus more narrowly on online testing, generally based on anecdotal assumptions that online students are more likely to engage in academic dishonesty in testing than students in traditional on-campus courses. To address such assumptions, a statistical model to predict examination scores was recently used to predict academic dishonesty in testing. Using measures of human capital variables (for example, grade point average, class rank) to predict examination scores, the model provides for a comparison of R 2 statistics. This model proposes that the more human capital variables explain variation in examination scores, the more likely the examination scores reflect students’ abilities and the less likely academic dishonesty was involved in testing. The only study to employ this model did provide some support for the assertion that lack of test monitoring in online courses may result in a greater degree of academic dishonesty. In this study, however, a further test of the predictive model resulted in contradictory findings. The disparate findings between prior research and the current study may have been due to the use of additional control variables and techniques designed to limit academic dishonesty in online testing.
| Year | Citations | |
|---|---|---|
Page 1
Page 1