An overview of artificial intelligence in computer-assisted language learning
- URL: http://arxiv.org/abs/2505.02032v1
- Date: Sun, 04 May 2025 08:43:00 GMT
- Title: An overview of artificial intelligence in computer-assisted language learning
- Authors: Anisia Katinskaia,
- Abstract summary: We review how artificial intelligence can be applied to support language learning and teaching.<n>Call systems are made up of many components that perform various functions.<n>Recent advances in AI should result in improvements in CALL, yet there is a lack of surveys that focus on AI in the context of this research field.
- Score: 0.135975510645475
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Computer-assisted language learning -- CALL -- is an established research field. We review how artificial intelligence can be applied to support language learning and teaching. The need for intelligent agents that assist language learners and teachers is increasing: the human teacher's time is a scarce and costly resource, which does not scale with growing demand. Further factors contribute to the need for CALL: pandemics and increasing demand for distance learning, migration of large populations, the need for sustainable and affordable support for learning, etc. CALL systems are made up of many components that perform various functions, and AI is applied to many different aspects in CALL, corresponding to their own expansive research areas. Most of what we find in the research literature and in practical use are prototypes or partial implementations -- systems that perform some aspects of the overall desired functionality. Complete solutions -- most of them commercial -- are few, because they require massive resources. Recent advances in AI should result in improvements in CALL, yet there is a lack of surveys that focus on AI in the context of this research field. This paper aims to present a perspective on the AI methods that can be employed for language learning from a position of a developer of a CALL system. We also aim to connect work from different disciplines, to build bridges for interdisciplinary work.
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