TECHNOLOGIQUE

A Global Journal on Technological Developments and Scientific Innovations
ISSN Online: 3028-1415 | Print: 3028-1407

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Original Research

The Impact of Artificial Intelligence on Academic Integrity: A Scoping Review

Technologique: A Global Journal on Technological Developments and Scientific Innovations

ISSN Online: 3028-1415 | Print: 3028-1407

Volume 6 | Issue 1 | 2025 | 39 – 55

Alexa Clarisse N. Loberes1, ORCID No. 0009-0003-3538-5297

John Paulo G. Doroteo2, ORCID No. 0009-0001-6252-3603

1Discipline Education Officer, De La Salle University, 2401 Taft Avenue, Manila, Philippines
2STREAM & Robotics Faculty, De La Salle University Integrated School, Biñan City, Laguna, Philippines

Article History:

Initial submission: 20 October 2025
First decision: 23 October 2025
Revision received: 20 December 2025
Accepted for publication: 23 December 2025
Online release: 31 December 2025

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Abstract

In the post-pandemic era, the rise of Generative Artificial Intelligence (GenAI) has sparked significant concerns from educators and researchers regarding academic integrity. These concerns are highlighted by a 2024 study by Waltzer et al., which illustrates the growing tension between technological innovation and ethical standards in university classrooms. This scoping review systematically maps existing literature to identify how student use of GenAI aligns with documented integrity risks and institutional responses. Following PRISMA-ScR standards, a total of 281 articles were retrieved from Scopus and EBSCOhost between 2023 and 2025, resulting in a finalized dataset of 35 empirical studies. Data extraction utilized the SAMR (Substitution, Augmentation, Modification, Redefinition) model as a diagnostic framework to measure the depth of technology integration. Results indicate a significant demographic concentration, with 88.6% of research situated in Higher Education, and ChatGPT identified as the primary tool utilized. Analysis reveals that while 68.6% of usage falls within the Enhancement phase, there is a critical mismatch between “Process-oriented” risks, such as cognitive erosion, and current “Product-oriented” institutional solutions like detection tools. To address this gap, the study proposes the original SAMR-Integrity-Response (SIR) Framework. This model provides a strategic roadmap for educational institutions, advocating for a shift from defensive regulatory postures at lower integration levels to evolutionary pedagogical pivots, including assessment redesign and process-based grading, at transformative levels. This review equips institutions with the tools to preserve integrity in digitally enabled learning environments.

Keywords: Generative Artificial Intelligence, LLM, Large Language Model, Academic Integrity, Academic Dishonesty

Cite this article

APA (7th edition)

Loberes, A. C. N., & Doroteo, J. P. G. (2025). The impact of artificial intelligence on academic integrity: A scoping review. Technologique: A Global Journal on Technological Developments and Scientific Innovations, 6(1), 37–52. https://doi.org/10.62718/vmca.tech-gjtdsi.6.1.SC-1125-032

Author contributions

– (Not applicable).

Funding

This research received no external funding.

Conflict of interest

The author declares no conflict of interest.

Institutional ethics review statement

Ethics approval was not required for this study as it involved publicly available data.

Data availability statement

All data supporting the findings of this study are included within the manuscript and its supplementary materials.

Declaration of generative AI use/assistance

No AI tools were used in the preparation of this manuscript.

Acknowledgement

– (Not available).

Publisher’s disclaimer

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.

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