Personalized Language Learning with an LLM Chatbot: Effects of Immediate vs. Delayed Corrective Feedback
The emergence of Large Language Models (LLMs) has opened new possibilities for language learning through conversational interaction with chatbots. Yet, little empirical evidence exists on how students experience such interactions and how corrective feedback should be provided. Research suggests that immediate corrective feedback is generally more effective than delayed feedback. Nevertheless, learners' perception of this effectiveness and their preferences for feedback timing, particularly in the domain of Computer-Assisted Language Learning (CALL), remain underexplored. This study investigates the feasibility of providing immediate feedback and examines the impact of feedback timing on user experience and grammar learning gains in English. An in-the-wild experiment was conducted with 66 L2 English learners, who integrated chatbot sessions into their English course as an extracurricular activity over one semester. Participants were randomly assigned to two groups receiving feedback either during or after the conversation. Findings reveal no significant difference in learning gains, but immediate feedback enhanced user experience, leading to overall positive perceptions of the chatbot. Additionally, we explore users' perceptions of the chatbot's social role and personality, offering a roadmap for future enhancements. These results provide valuable insights into the potential of LLMs and chatbots for language learning.
Publication Details
- Type
- Journal Article
- Published in
- Frontiers in Education
- Publisher
- Frontiers Media S.A.
- Volume
- 11
- Pages
- 1703664
- ISSN
- 2504-284X
- DOI
- 10.3389/feduc.2026.1703664
- Year
- 2026
Cite (BibTeX)
@article{m.kamelabad2026-PersonalizedLanguageLearning,
title = {Personalized Language Learning with an LLM Chatbot: Effects of Immediate vs. Delayed Corrective Feedback},
author = {M. Kamelabad, Alireza and Turano, Beatrice and Lundin, Mattias and Skantze, Gabriel},
year = {2026},
month = {feb},
journal = {Frontiers in Education},
volume = {11},
pages = {1703664},
publisher = {Frontiers Media S.A.},
issn = {2504-284X},
doi = {10.3389/feduc.2026.1703664}
}