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2023
DOI: 10.3991/ijoe.v19i10.39583
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Abnormal Behavior Detection in Online Exams Using Deep Learning and Data Augmentation Techniques

Muhanad Abdul Elah Alkhalisy,
Saad Hameed Abid

Abstract: Massive open online courses (MOOCs) and other forms of distance learning have gained popularity in recent years. The success of remote online exam proctoring determines the integrity of the exam. Deep-learning-powered proctoring services have also grown in popularity. A large number of samples are needed for deep-learning training. The network’s generalization ability is poor due to insufficient training data or an uneven lack of variation. This study illustrates how to analyze students’ anomalous behavior by … Show more

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