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Learning performance prediction and alert method in hybrid learning

Learning performance prediction and alert method in hybrid learning
Learning performance prediction and alert method in hybrid learning
In online learning, students’ learning data such as time and logs are commonly used to predict the student’s learning performance. In a hybrid context, learning activities occur both online and offline. Thus, how to integrate online and offline learning data effectively for an accurate learning performance prediction becomes very challenging. This paper proposes a “prediction and alert” model for students’ learning performance in a hybrid learning context. The model is developed and evaluated through analysing the 16-week (one semester) attributes of English learning data of 50 students in the eighth grade. Six significant variables were determined as learning performance attributes, namely, qualified rate, excellent rate, scores, number of practice sessions, practice time, and completion. The proposed model was put into actual practice through four months of application and modification, in which a sample of 50 middle school students participated. The model shows the feasibility and effectiveness of data analysis for hybrid learning. It can support students’ continuous online and offline learning more effectively.
2071-1050
Liu, Haiming
3ed791e3-9f1e-417e-a531-7faf19cca547
Zhuang, Huijuan
36e0e92f-0a35-428c-8064-bed7a4998e4c
Dong, Jing
a5cf5644-1d23-4323-9ace-4529fc7b8404
Mu, Su
231747fb-c01e-492e-9f41-aedf2f30b7e6
Liu, Haiming
3ed791e3-9f1e-417e-a531-7faf19cca547
Zhuang, Huijuan
36e0e92f-0a35-428c-8064-bed7a4998e4c
Dong, Jing
a5cf5644-1d23-4323-9ace-4529fc7b8404
Mu, Su
231747fb-c01e-492e-9f41-aedf2f30b7e6

Liu, Haiming, Zhuang, Huijuan, Dong, Jing and Mu, Su (2022) Learning performance prediction and alert method in hybrid learning. Sustainability, 14 (22), [14685]. (doi:10.3390/su142214685).

Record type: Article

Abstract

In online learning, students’ learning data such as time and logs are commonly used to predict the student’s learning performance. In a hybrid context, learning activities occur both online and offline. Thus, how to integrate online and offline learning data effectively for an accurate learning performance prediction becomes very challenging. This paper proposes a “prediction and alert” model for students’ learning performance in a hybrid learning context. The model is developed and evaluated through analysing the 16-week (one semester) attributes of English learning data of 50 students in the eighth grade. Six significant variables were determined as learning performance attributes, namely, qualified rate, excellent rate, scores, number of practice sessions, practice time, and completion. The proposed model was put into actual practice through four months of application and modification, in which a sample of 50 middle school students participated. The model shows the feasibility and effectiveness of data analysis for hybrid learning. It can support students’ continuous online and offline learning more effectively.

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Accepted/In Press date: 2 November 2022
Published date: 8 November 2022

Identifiers

Local EPrints ID: 502318
URI: http://eprints.soton.ac.uk/id/eprint/502318
ISSN: 2071-1050
PURE UUID: a5f64747-fac5-4010-807b-8304a2beea30
ORCID for Haiming Liu: ORCID iD orcid.org/0000-0002-0390-3657

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Date deposited: 23 Jun 2025 16:33
Last modified: 22 Aug 2025 02:35

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Contributors

Author: Haiming Liu ORCID iD
Author: Huijuan Zhuang
Author: Jing Dong
Author: Su Mu

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