Eurokd
European KnowledgeDevelopment Institute
Language Teaching Research Quarterly

e‐ISSN

    

2667-6753

CiteScore

  exclamation mark

1.2

ICV

  exclamation mark

124.94

SNIP

  exclamation mark

0.604

SJR

  exclamation mark

0.283

CiteScore

  exclamation mark

1.2

ICV

  exclamation mark

124.94

SNIP

  exclamation mark

0.604

SJR

  exclamation mark

0.283

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Review Article

Artificial Intelligence in EFL Education in China: A Systematic Review of Trends, Gaps, and Future Directions (2015-2024)

Language Teaching Research Quarterly, Volume 49, Pages 59-89, https://doi.org/10.32038/ltrq.2025.49.04

This study conducts a systematic review of artificial intelligence in English as a Foreign Language teaching and learning in China from 2015 to 2024 based on 56 articles selected from Scopus, ScienceDirect, ERIC, and CNKI databases, highlighting emerging trends, unresolved gaps, and possible avenues for future research. The findings reveal that AI in EFL education in China is at an early yet fast-developing stage. Research designs are dominated by experimental studies, system or model design, and empirical studies, with the mixed method being the most common, while the qualitative method is neglected in experimental research. AI systems and platforms like ChatGPT and Pigai are widely discussed, but AI algorithms receive limited attention. Higher education and university students are the focus, whereas K12 participants, adult learners, policymakers, AI developers, and administrators are rarely involved. The most discussed language skills are speaking and writing. Language acquisition and affective or psychological states are the most studied learning outcomes, while contemporary competencies remain under-researched. AI’s role in enhancing English skills is well-documented, but its potential in administration, intelligent tutoring, and adaptation and personalization remains underexplored. The review offers an up-to-date landscape with valuable insights for academics, teachers, decision-makers, and AI technologists.

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Acknowledgments

The first author expresses deep gratitude to Mae Fah Luang University, Chuxiong Normal University, Dr. Maneerat Chuaychoowong, and teachers in the English for Professional Development Program at MFU for invaluable support throughout her PhD studies.

 

Funding

Not applicable.

 

Conflict of Interests

Miss. Zongbi Qin has two affiliations as a Ph.D. candidate at Mae Fah Luang University in Thailand and a lecturer at Chuxiong Normal University in China. The copyright of this paper is the property of Mae Fah Luang University as the partial constitution of her graduation dissertation. As for Dr. Maneerat Chuaychoowong, she declares no conflicts of interest.

 

Open Access

This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons license, and indicate if changes were made. You may view a copy of Creative Commons Attribution 4.0 International License here: http://creativecommons.org/licenses/by/4.0/