人工智能辅助个性化语言学习:系统回顾与共被引分析

Xieling Chen, D. Zou, G. Cheng, Haoran Xie
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引用次数: 7

摘要

人工智能(AI)的个性化学习在包括语言学习在内的各种教育环境和领域受到越来越多的关注。本研究从文章趋势、顶级期刊、国家/地区和机构、人工智能技术类型、学习成果和支持、参与者、科学合作、共引关系等方面对人工智能辅助个性化语言学习(PLL)的学术研究进行了系统回顾。结果显示,台湾院校在该领域占据优势,并且普遍使用智能辅导系统、自然语言处理和人工神经网络来促进个性化诊断和语言学习的学习路径和材料推荐。此外,学生的语言成绩有所提高,对语言学习和人工智能技术的感知、满意度或动机也有所提高。共同作者分析结果表明,区域间合作密切,跨区域合作有望进一步加强。共引网络分析结果突出了模糊系统和项目响应理论的意义。此外,学习者特征挖掘和学习资源适应是实现移动和网络PLL的重要方向。
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Artificial intelligence-assisted personalized language learning: systematic review and co-citation analysis
Artificial intelligence (AI) for personalized learning has attracted increasing attention in various educational contexts and domains, including language learning. This study systematically reviewed academic studies on AI-assisted personalized language learning (PLL) from the perspectives of article trends, top journals, countries/regions and institutions, AI technology types, learning outcomes and supports, participants, scientific collaborations, and co-citation relations. Results indicated Taiwanese institutions’ predominance in the field and the prevalent use of intelligent tutoring systems, natural language processing, and artificial neural network in facilitating personalized diagnosis and learning path and material recommendations in language learning. Furthermore, students’ improved language outcomes and positive perception, satisfaction, or motivation towards language learning and AI technologies were commonly reported. The co-authorship analysis results indicated the close inter-regional collaborations, while the cross-regional collaborations are expected to be enhanced. The co-citation network analysis results highlighted the significance of fuzzy systems and item response theory. Additionally, learner profiling mining and learning resource adaptation were important directions to realize mobile- and web-based PLL.
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