SA-FEM: Combined Feature Selection and Feature Fusion for Students’ Performance Prediction
Author:
Ye MingtaoORCID, Sheng Xin, Lu Yanjie, Zhang GuodaoORCID, Chen HuilingORCID, Jiang Bo, Zou SenhaoORCID, Dai LitingORCID
Abstract
Around the world, the COVID-19 pandemic has created significant obstacles for education, driving people to discover workarounds to maintain education. Because of the excellent benefit of cheap-cost information distribution brought about by the advent of the Internet, some offline instructional activity started to go online in an effort to stop the spread of the disease. How to guarantee the quality of teaching and promote the steady progress of education has become more and more important. Currently, one of the ways to guarantee the quality of online learning is to use independent online learning behavior data to build learning performance predictors, which can provide real-time monitoring and feedback during the learning process. This method, however, ignores the internal correlation between e-learning behaviors. In contrast, the e-learning behavior classification model (EBC model) can reflect the internal correlation between learning behaviors. Therefore, this study proposes an online learning performance prediction model, SA-FEM, based on adaptive feature fusion and feature selection. The proposed method utilizes the relationship among features and fuses features according to the category that achieved better performance. Through the analysis of experimental results, the feature space mined by the fine-grained differential evolution algorithm and the adaptive fusion of features combined with the differential evolution algorithm can better support online learning performance prediction, and it is also verified that the adaptive feature fusion strategy based on the EBC model proposed in this paper outperforms the benchmark method.
Subject
Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry
Reference36 articles.
1. Adedoyin, O.B., and Soykan, E. (2020). COVID-19 pandemic and online learning: The challenges and opportunities. Interactive Learn. Environ., 1–13. Available online: https://www.tandfonline.com/toc/nile20/0/0. 2. Measuring and assessing regional education inequalities in China under changing policy regimes;Appl. Spat. Anal. Policy,2020 3. Feng, W., Tang, J., and Liu, T.X. (February, January 27). Understanding dropouts in MOOCs. Proceedings of the AAAI Conference on Artificial Intelligence, Honolulu, HI, USA. 4. Marras, M., Vignoud, J.T.T., and Kaser, T. (July, January 29). Can feature predictive power generalize? benchmarking early predictors of student success across flipped and online courses. Proceedings of the 14th International Conference on Educational Data Mining, Paris, France. 5. He, Y., Chen, R., Li, X., Hao, C., Liu, S., Zhang, G., and Jiang, B. (2020). Online at-risk student identification using RNN-GRU joint neural networks. Information, 11.
Cited by
5 articles.
订阅此论文施引文献
订阅此论文施引文献,注册后可以免费订阅5篇论文的施引文献,订阅后可以查看论文全部施引文献
|
|