DOI:​10.14569/IJACSA.2015.060415
Corpus ID: 16556027
Knowledge Level Assessment in e-Learning Systems Using Machine Learning and User Activity Analysis
Nazeeh Ghatasheh
Published 2015

Computer Science
International Journal of Advanced Computer Science and Applications
Electronic Learning has been one of the foremost trends in education so far. Such importance draws the attention to an important shift in the educational paradigm. Due to the complexity of the… Expand
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19 Citations
Highly Influential Citations
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7
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4
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Knowledge level
Machine learning
Support vector machine
Programming paradigm
Concept map
Learning Disorders
Approximation error
Prospective search
Autonomous robot
Interpreter (computing)
Foremost
Multiclass classification
CDISC SDTM Evaluator Terminology
Algorithm
CNS disorder
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