Akter, Antura
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Artificial Intelligence (AI) for Automated Writing Evaluation in TESOL: Effectiveness and Challenges Jannath, Husnul; Akter, Antura
JOLLT Journal of Languages and Language Teaching Vol. 14 No. 1 (2026): January
Publisher : Universitas Pendidikan Mandalika

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.33394/jollt.v14i1.18165

Abstract

Artificial Intelligence (AI) is having a significant influence on language learning, primarily through Automated Writing Evaluation (AWE), which gives quick and personalized feedback to learners. However, there is not enough research on the effectiveness and challenges in establishing higher-order writing abilities in the TESOL context. This study reviews the available research on how AI-based AWE supports TESOL writing and what problems it might have. This research follows Braun and Clarke's (2006) thematic analysis of 55 peer-reviewed studies from academic sources (e.g., Scopus, Google Scholar, JSTORE, ERIC) published between 2018 and 2025 reporting findings on the effect of AWE on pedagogy in TESOL teaching. The findings focus on both the effectiveness and the challenges of AWE tools. The analysis highlights themes such as improved linguistic accuracy, enhanced learner motivation, and personalized learning experiences, which contrast with challenges like academic dishonesty, ethical concerns, over-reliance on AI, and limitations in addressing higher-order cognitive skills. These findings indicate that while AWE tools significantly improve grammar, vocabulary, and writing fluency, these are less effective in developing critical thinking and argumentation. The study suggests the need for blended feedback models that combine AI feedback and teacher guidance, the implementation of ethical guidelines, and the conduct of long-term research to see how AWE affects advanced writing skills over time.
Artificial Intelligence Tools in Personalized Language Learning: A Systematic Thematic Review Orpy, Kazi Bushra; Juyana, Shakere; Akter, Antura
JOLLT Journal of Languages and Language Teaching Vol. 14 No. 2 (2026): April
Publisher : Universitas Pendidikan Mandalika

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.33394/jollt.v14i2.18187

Abstract

The integration of artificial intelligence (AI) technologies into language learning has become an essential field of research because it promises to adapt educational experiences to individual learners. With the rapid progress of automatic learning algorithms, adaptive learning systems can now immediately analyze learners' progress and adjust content and delivery methods accordingly. This adaptability improves the personalization of linguistic education, allowing students to engage more deeply with the material at their own pace and skill level. This study aims to explore how AI-driven technologies can improve personalized language learning experiences through autonomous learning. This study focuses on adaptive learning systems powered by AI tools such as ChatGPT, DeepSeek, and Duolingo, developing user engagement strategies, and exploring evolving implications for better results in language acquisition. This research uses a systematic thematic review methodology. Following the guidelines from Braun and Clarke (2006), systematically analyzed 59 peer-reviewed studies thematically. They were identified through academic databases (e.g., Scopus, Google Scholar, ERIC, JSTOR, Education Source) published during 2023-2025. Developed themes included AI for student autonomy, pocket teacher AI: feedback and learning apps, AI for diverse demographics and social inclusion, intelligent conversations: chatbots and language models, personalized learning, limitations, and access inequalities. The study shows that personalized learning helps students learn languages better. Students who use advanced AI tools remember more and manage their learning better than with traditional methods. In the end, the implications of this study highlight the potential of AI tools such as ChatGPT, DeepSeek, and Duolingo to enhance language education by facilitating personalized learning and helping learners achieve better language-learning outcomes.