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Generative AI-enabled adaptive learning platform: How I can help you pass your driving test?

2025·0 Zitationen·Artificial Intelligence in EducationOpen Access
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0

Zitationen

4

Autoren

2025

Jahr

Abstract

Purpose This study aims to develop an adaptive learning platform that leverages generative artificial intelligence (AI) to automate assessment creation and feedback delivery. The platform provides self-correcting tests and personalised feedback that adapts to each learner's progress and history, ensuring a tailored learning experience. Design/methodology/approach The study involves the development and evaluation of a web-based application for revision for the UK driving theory test. The platform generates dynamic, non-repetitive question sets and offers adaptive feedback based on user performance over time. The effectiveness of AI-generated assessments and feedback is evaluated through expert review and model analysis. Findings The results show the successful generation of relevant and accurate questions, alongside positive and helpful feedback. The personalised test generation closely aligns with expert-created assessments, demonstrating the reliability of the system. These findings suggest that generative AI can enhance learning outcomes by adapting to individual student needs and offering tailored support. Research limitations/implications Limitations include the narrow, self-taught scope and lack of large-scale validation. The algorithmic adaptation may miss nuanced learner needs. Future research requires longitudinal studies and the development of more semantically intelligent adaptation algorithms. Originality/value This research introduces an AI-powered assessment and feedback system that goes beyond traditional solutions by incorporating automation and adaptive learning. The non-memoryless feedback mechanism ensures that student history and performance inform future assessments, making the learning process more effective and individualised. This contrasts with conventional systems that provide static, one-time feedback without considering past progress.

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