Abstract
The small private online course (SPOC)-based blended learning is becoming increasingly significant for college campus courses in the current COVID-19 pandemic scenario. It is critical to predicting students’ performance for providing personalized intervention and guidance in the blended learning environment, however, it has been shown in few studies that learning performance is predicable in situations related to teaching context. In this paper, we implemented one whole semester blended learning course based on Xuexitong and traditional classroom to examine the predictability of student performance. Multiple linear regression model was utilized to analyze the impact of online and offline learning activities on student performance. Nonlinear models including GBDT, SVR and KNN were contrasted to check whether the predictions were generalized. The experiment reveals that learning data from off line and online activities that are part of blended learning can be used to predict students’ performance. The attributes that influence most in our course were Class. Attendance, Online. Task, Lab.Projects Score, Online. Time and Online. Peer-review Grade. The results can help to learn about students learning situations and provide personalized intervention.
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Acknowledgment
The authors would like to thank Southwest University Teaching Reform Research Project (No. SWU19808039) for financially supporting this research.
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Xuan, W., Yanmei, L., Fan, L., Xiangliang, L. (2023). Predicting Students Performance in SPOC-Based Blended Learning. In: Hong, W., Weng, Y. (eds) Computer Science and Education. ICCSE 2022. Communications in Computer and Information Science, vol 1812. Springer, Singapore. https://doi.org/10.1007/978-981-99-2446-2_51
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DOI: https://doi.org/10.1007/978-981-99-2446-2_51
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