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Technologique: A Global Journal on Technological Developments and Scientific Innovations
Volume 8 | Issue 1 | 2026 | 49 – 64
1MS Computer Engineering, Graduate School, Polytechnic University of the Philippines, Sta. Mesa, Manila, Philippines
2Special Lecturer, PhD & MS Computer Engineering , Polytechnic University of the Philippines , Sta. Mesa, Manila, Philippines
3Program Chair, PhD & MS Computer Engineering, Polytechnic University of the Philippines, Sta. Mesa, Manila, Philippines
Article History:
Initial submission: 03 March 2026
First decision: 08 March 2026
Revision received: 04 May 2026
Accepted for publication: 08 May 2026
Online release: 13 May 2026
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Curriculum innovation remains a critical challenge in computer engineering education due to rapidly evolving technological demands and industry requirements. Traditional curriculum evaluation approaches, which rely on periodic reviews and manual assessments, are often insufficiently adaptive and lack predictive capabilities. This systematic review examined the role of machine learning (ML) and predictive analytics in curriculum evaluation and innovation, with the goal of developing an evidence-based framework for continuous, data-driven curriculum improvement. Following PRISMA 2020 guidelines, a structured search was conducted across five databases (IEEE Xplore, Scopus, Web of Science, SpringerLink, Google Scholar) for peer-reviewed studies published between 2020 and 2025. After screening 342 initial records, 41 studies met the inclusion criteria. The Mixed Methods Appraisal Tool (MMAT) was used for quality assessment. Findings revealed that while ML techniques particularly classification models (Random Forest, Support Vector Machine), deep learning architectures, and ensemble methods are widely used for predicting student performance and retention (82.9% of studies), there is limited integration of these insights into curriculum redesign processes (only 17.1% address curriculum-level action). A significant operational gap exists between prediction and actionable curriculum improvement. Based on the synthesis, this study proposes an ML-driven framework that integrates data preprocessing, predictive modeling with explainable AI (XAI), insight generation, and curriculum decision support. Key best practices include interpretable-by-design approaches, stakeholder integration, and addressing ethical fairness.
Keywords: curriculum innovation, computer engineering education, Machine Learning (ML), predictive analytics, systematic review, PRISMA 2020, Mixed Methods Appraisal Tool (MMAT)
APA (7th edition)
Facelo, E. M., De Mesa, L. V. B., Caadan, S. J. P. M., Mallari, M. O., & De La Cruz, A. (2026). A machine learning-driven framework for continuous curriculum innovation in computer education: A systematic literature review. Technologique: A Global Journal on Technological Developments and Scientific Innovations, 8(1), 49–64. https://doi.org/10.62718/vmca.tech-gjtdsi.8.1.SC-0326-001.
Emerson M. Facelo: Conceptualization; Study design; Development of proposed framework; Title formulation; Writing – introduction and literature review; Methodology; Data gathering procedures; Literature matrix development; System architecture and flowchart design; Synthesis of findings; Discussion; Overall manuscript preparation and final review
Lexter Von B. De Mesa: Abstract writing; Keywords; Manuscript formatting and refinement
Sim Jhon Paul M. Caadan: Interpretation; Thematic and comparative analysis; Results synthesis.
This research received no external funding.
The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
Ethics approval was not required for this study as it involved the analysis of publicly available, peer-reviewed literature and did not include human participants, animal subjects, or sensitive personal data. The research was conducted in accordance with standard academic and ethical guidelines for literature-based studies.
No new primary data were generated or analyzed in this study. All information supporting the findings is derived from publicly available, peer-reviewed literature cited within the manuscript. Therefore, all relevant data are contained within the article and its referenced sources.
AI-assisted language editing and refinement were performed using ChatGPT to improve clarity, grammar, and overall readability of the manuscript. The authors carefully reviewed, revised, and approved all content. The authors remain fully responsible for the accuracy, integrity, and originality of the work. AI tools were not used for data analysis, interpretation of findings, or decision-making processes, and no AI tool is listed as an author.
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The views expressed in this article are those of the authors and do not necessarily reflect the views of the publisher. The publisher disclaims any responsibility for errors or omissions.