Personalized word learning for university students: a profile-based method for e-learning systems

It is widely acknowledged that the acquisition of vocabulary is the foundation of learning English. With the rapid development of information technologies in recent years, e-learning systems have been widely adopted for English as a Second Language (ESL) Learning. However, a limitation of convention...

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Veröffentlicht in:Journal of computing in higher education 2019-08, Vol.31 (2), p.273-289
Hauptverfasser: Xie, Haoran, Zou, Di, Zhang, Ruofei, Wang, Minhong, Kwan, Reggie
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container_issue 2
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container_title Journal of computing in higher education
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creator Xie, Haoran
Zou, Di
Zhang, Ruofei
Wang, Minhong
Kwan, Reggie
description It is widely acknowledged that the acquisition of vocabulary is the foundation of learning English. With the rapid development of information technologies in recent years, e-learning systems have been widely adopted for English as a Second Language (ESL) Learning. However, a limitation of conventional word learning systems is that the prior vocabulary knowledge of learners is not well captured. Understanding the prior knowledge of learners plays a key role in providing personalized learning, which many studies suggest is a successful learning paradigm for vocabulary acquisition, one that aims to optimize instructional approaches and paces by catering to individual learning needs. A powerful learner profile model which can represent learner’s prior knowledge is therefore important for word learning systems to better facilitate personalized learning. In this article, we investigated various methods to establish learner profiles and attempted to determine the optimal method. To verify the effectiveness of personalized word learning supported by the proposed model, ESL students from several universities participated in this study. The empirical results showed that the proposed learner profile model can better facilitate vocabulary acquisition compared with other baseline methods.
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subjects College Students
Colleges & universities
Distance learning
Education
Educational Needs
Educational Technology
Electronic Learning
English
English (Second Language)
English as a second language
English as a second language learning
Higher Education
Individualized Instruction
Information technology
Instructional Effectiveness
Learning and Instruction
Online instruction
Optimization
Prior Learning
Second Language Learning
Second language vocabulary learning
Students
Teaching Methods
Vocabulary Development
title Personalized word learning for university students: a profile-based method for e-learning systems
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