Research on Early Academic Warning by a Hybrid Methodology

  • Published : 2021.10.03

Abstract

Early academic warning is considered as an inherent problem in education data mining. Early and timely concern and guidance can save a student's university career. It is widely assumed as a multi-class classification system in view of machine learning. Therefore, An accurate and precise methodical solution is a complicated task to accomplish. For this issue, we present a hybrid model employing rough set theory with a back-propagation neural network to ameliorate the predictive capability of the system with an illustrative example. The experimental results show that it is an effective early academic warning model with an escalating improvement in predictive accuracy.

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Acknowledgement

This work was supported by the Research and Practice Project of Higher Education Teaching Reform in Hebei Province (No. 2018GJJG289).