AI-Assisted Self-Regulated Learning in English Language Education: A Conceptual Model for Human–Technology Scaffolding
Authors
Wan Yonsharlinawati Wan Jaafar
Department of General Studies, Politeknik Sultan Azlan Shah, Tanjong Malim, Perak (Malaysia)
Department of General Studies, Politeknik Sultan Azlan Shah, Tanjong Malim, Perak (Malaysia)
Article Information
DOI: 10.47772/IJRISS.2026.1026EDU0244
Subject Category: Education
Volume/Issue: 10/26 | Page No: 3062-3071
Publication Timeline
Submitted: 2026-04-16
Accepted: 2026-04-22
Published: 2026-05-14
Abstract
The integration of artificial intelligence (AI) into English language education has generated considerable scholarly interest, particularly in the context of self-regulated learning (SRL). Despite the rapid proliferation of AI-powered tools such as intelligent tutoring systems, automated writing evaluators, and speech recognition platforms, a coherent conceptual model that systematically articulates the interplay between human pedagogical agency and technological scaffolding remains underdeveloped. This paper addresses this gap by proposing a conceptual model of Human–Technology Scaffolding (HTS) in AI-assisted SRL for tertiary-level English-language education. Drawing upon Zimmerman’s cyclical model of SRL, Vygotsky’s zone of proximal development, and recent advances in human–AI co-regulation, the proposed framework delineates three interconnected layers: adaptive AI scaffolding, metacognitive mediation, and instructor-guided co-regulation. Through a synthesis of 70 peer-reviewed sources from Scopus-indexed journals published between 2018 and 2026, the paper critically examines how AI tools support the forethought, performance monitoring, and self-reflection phases of SRL across writing, speaking, listening, and reading. The model further accounts for ethical dimensions, including algorithmic bias, data privacy, digital equity, and the risk of over-reliance on automated systems. Implications for curriculum design, teacher professional development, institutional policy, and technology development are discussed. The paper concludes with a research agenda that emphasises the need for mixed-methods empirical validation, culturally responsive AI design, and longitudinal studies on affective and motivational outcomes in diverse educational contexts.
Keywords
artificial intelligence, self-regulated learning
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References
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