
During the pandemic, universities were forced to convert their educational process online. Students had to adapt to new educational conditions and the proposed online environment. Now, we are back to the traditional blended learning environment and wish to understand the students’ attitudes and perceptions of online learning, knowing that they are able to compare blended and online modes. The aim of this paper is to present the performed predictive analysis regarding the students’ online learning performance taking into account their opinion. The predictive models are created through a supervised machine learning algorithm based on Artificial Neural Networks and are characterized with high accuracy. The analysis is based on generated synthetic datasets, ensuring a high level of students’ privacy preservation.
machine learning, intelligent online environment, predictive analysis, independent student activities, independent student activities; intelligent online environment; learning performance; machine learning; artificial neural networks; predictive analysis; synthetic data; privacy preservation, learning performance, Information technology, T58.5-58.64, artificial neural networks
machine learning, intelligent online environment, predictive analysis, independent student activities, independent student activities; intelligent online environment; learning performance; machine learning; artificial neural networks; predictive analysis; synthetic data; privacy preservation, learning performance, Information technology, T58.5-58.64, artificial neural networks
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