Achievement prediction and analysis based on neural network for smart education

Abstract In the traditional teaching mode, it is difficult for teachers to have a comprehensive understanding of each student’s study, and it is also hard for them to provide targeted guidance and assistance. With the development of data collection and analysis technology, schools and educational in...

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Main Authors: Luping Wang, Yun Hao, Shanshan Wang
Format: Article
Language:English
Published: Springer 2025-06-01
Series:Discover Education
Subjects:
Online Access:https://doi.org/10.1007/s44217-025-00606-3
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author Luping Wang
Yun Hao
Shanshan Wang
author_facet Luping Wang
Yun Hao
Shanshan Wang
author_sort Luping Wang
collection DOAJ
description Abstract In the traditional teaching mode, it is difficult for teachers to have a comprehensive understanding of each student’s study, and it is also hard for them to provide targeted guidance and assistance. With the development of data collection and analysis technology, schools and educational institutions can make better use of big data technology to analyze students' learning data and predict their academic performance. In order that teachers can better understand the learning characteristics and needs of each student to realize personalized teaching, this paper investigates the impact of five usual performances, including students' attendance, homework, topic report, communication, and answering questions, on students' final exam results. In this paper, we select the usual scores and final scores of 225 students in a university, and use BP neural network to analyze the relationship between these data, establish a prediction model, and compare and analyze the actual scores of students at the end of the term with the predicted results through various aspects. Then, the K-Fold cross-validation method was used to compare the students' actual scores and predicted scores at the end of the semester. The results show that the BP neural network model can effectively predict students' final results and promote targeted personalized education.
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issn 2731-5525
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spelling doaj-art-7f091168031943feb5a7dc8f625f4d942025-08-20T03:45:32ZengSpringerDiscover Education2731-55252025-06-014111310.1007/s44217-025-00606-3Achievement prediction and analysis based on neural network for smart educationLuping Wang0Yun Hao1Shanshan Wang2School of Mechanical Engineering, University of Shanghai for Science and TechnologySchool of Mechanical Engineering, University of Shanghai for Science and TechnologyIntel Asia-Pacific Research & Development Ltd.Abstract In the traditional teaching mode, it is difficult for teachers to have a comprehensive understanding of each student’s study, and it is also hard for them to provide targeted guidance and assistance. With the development of data collection and analysis technology, schools and educational institutions can make better use of big data technology to analyze students' learning data and predict their academic performance. In order that teachers can better understand the learning characteristics and needs of each student to realize personalized teaching, this paper investigates the impact of five usual performances, including students' attendance, homework, topic report, communication, and answering questions, on students' final exam results. In this paper, we select the usual scores and final scores of 225 students in a university, and use BP neural network to analyze the relationship between these data, establish a prediction model, and compare and analyze the actual scores of students at the end of the term with the predicted results through various aspects. Then, the K-Fold cross-validation method was used to compare the students' actual scores and predicted scores at the end of the semester. The results show that the BP neural network model can effectively predict students' final results and promote targeted personalized education.https://doi.org/10.1007/s44217-025-00606-3BP neural networkResult predictionIntelligent education
spellingShingle Luping Wang
Yun Hao
Shanshan Wang
Achievement prediction and analysis based on neural network for smart education
Discover Education
BP neural network
Result prediction
Intelligent education
title Achievement prediction and analysis based on neural network for smart education
title_full Achievement prediction and analysis based on neural network for smart education
title_fullStr Achievement prediction and analysis based on neural network for smart education
title_full_unstemmed Achievement prediction and analysis based on neural network for smart education
title_short Achievement prediction and analysis based on neural network for smart education
title_sort achievement prediction and analysis based on neural network for smart education
topic BP neural network
Result prediction
Intelligent education
url https://doi.org/10.1007/s44217-025-00606-3
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AT yunhao achievementpredictionandanalysisbasedonneuralnetworkforsmarteducation
AT shanshanwang achievementpredictionandanalysisbasedonneuralnetworkforsmarteducation