Educationnpj Science of Learning
Optimized collusion prevention for online exams during social distancing
M. Li, L. Luo, et al.
Discover how online education evolved during the COVID-19 pandemic, leading to a groundbreaking optimization-based anti-collusion approach for distanced online testing, developed by Mengzhou Li, Lei Luo, Sujoy Sikdar, Navid Ibtehaj Nizam, Shan Gao, Hongming Shan, Melanie Kruger, Uwe Kruger, Hisham Mohamed, Lirong Xia, and Ge Wang. This innovative method significantly reduces cheating opportunities while maintaining academic integrity and student privacy.
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