AI-Driven Predictive Models for Optimizing Mathematics Education Technology: Enhancing Decision-Making through Educational Data Mining and Meta-Analysis

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Bibliographic Details
Title: AI-Driven Predictive Models for Optimizing Mathematics Education Technology: Enhancing Decision-Making through Educational Data Mining and Meta-Analysis
Language: English
Authors: Aneng He (ORCID 0009-0007-6136-8422), Wenwen Yuan, Lai Soon Lee (ORCID 0000-0002-6270-1414), Tian Tian (ORCID 0000-0003-1323-4773)
Source: Smart Learning Environments. 2025 12.
Availability: Springer. Available from: Springer Nature. One New York Plaza, Suite 4600, New York, NY 10004. Tel: 800-777-4643; Tel: 212-460-1500; Fax: 212-460-1700; e-mail: customerservice@springernature.com; Web site: https://link.springer.com/
Peer Reviewed: Y
Page Count: 42
Publication Date: 2025
Document Type: Journal Articles
Information Analyses
Reports - Research
Education Level: Elementary Secondary Education
Junior High Schools
Middle Schools
Secondary Education
Descriptors: Artificial Intelligence, Prediction, Models, Mathematics Education, Educational Technology, Decision Making, Data Use, Elementary Secondary Education, Teaching Methods, Mathematics Instruction, Foreign Countries, Middle Schools, Technology Integration, Beginning Teachers, Experienced Teachers, Mathematics Achievement
Geographic Terms: China
DOI: 10.1186/s40561-025-00415-z
ISSN: 2196-7091
Abstract: This paper explores the challenge of achieving consistent effectiveness in integrating Mathematics Education Technology (MET) in K-12 classrooms, focusing on factors such as technology type, timing, and instructional strategies. It highlights the difficulties novice teachers face in optimizing MET compared to experienced educators, emphasizing the need to better understand the ideal duration and application of MET in various teaching settings. This study proposes using Artificial Intelligence (AI) to predict and optimize MET effectiveness, aiming to enhance student achievement. However, a key challenge is the lack of comprehensive MET databases, prompting the exploration of novel data collection methods and meta-analysis for educational data mining. An AI-based predictive model is developed for MET, analyzing 423 publications on its effectiveness in Chinese K-12 mathematics education. Nine AI-driven predictive models were created, with the best-performing predictive model being eXtreme Gradient Boosting, enhanced with L2 Regularization, Synthetic Minority Over-sampling Technique-augmented Regression (SMOTER), and Active Learning. The proposed model was further refined using Particle Swarm Optimization for hyperparameter tuning and analyzed with Shapley Additive Explanations (SHAP) values to assess feature importance. Numerical results indicated that the duration of MET usage is a critical factor for optimization. A controlled experiment in a Mainland China middle school validated the model's efficacy, showing that model-guided MET significantly outperformed traditional methods. These findings offer valuable insights for bridging gaps between novice and experienced teachers, promoting educational equity, and providing practical recommendations for improving MET integration in Mathematics education.
Abstractor: As Provided
Entry Date: 2026
Accession Number: EJ1492077
Database: ERIC
Description
Abstract:This paper explores the challenge of achieving consistent effectiveness in integrating Mathematics Education Technology (MET) in K-12 classrooms, focusing on factors such as technology type, timing, and instructional strategies. It highlights the difficulties novice teachers face in optimizing MET compared to experienced educators, emphasizing the need to better understand the ideal duration and application of MET in various teaching settings. This study proposes using Artificial Intelligence (AI) to predict and optimize MET effectiveness, aiming to enhance student achievement. However, a key challenge is the lack of comprehensive MET databases, prompting the exploration of novel data collection methods and meta-analysis for educational data mining. An AI-based predictive model is developed for MET, analyzing 423 publications on its effectiveness in Chinese K-12 mathematics education. Nine AI-driven predictive models were created, with the best-performing predictive model being eXtreme Gradient Boosting, enhanced with L2 Regularization, Synthetic Minority Over-sampling Technique-augmented Regression (SMOTER), and Active Learning. The proposed model was further refined using Particle Swarm Optimization for hyperparameter tuning and analyzed with Shapley Additive Explanations (SHAP) values to assess feature importance. Numerical results indicated that the duration of MET usage is a critical factor for optimization. A controlled experiment in a Mainland China middle school validated the model's efficacy, showing that model-guided MET significantly outperformed traditional methods. These findings offer valuable insights for bridging gaps between novice and experienced teachers, promoting educational equity, and providing practical recommendations for improving MET integration in Mathematics education.
ISSN:2196-7091
DOI:10.1186/s40561-025-00415-z