结合深度学习的多策略计算机辅助英语写作学习系统及其对学习的影响:写作反馈视角

IF 4 2区 教育学 Q1 EDUCATION & EDUCATIONAL RESEARCH Journal of Educational Computing Research Pub Date : 2023-07-28 DOI:10.1177/07356331231189294
Binbin Chen, Lina Bao, Rui Zhang, Jingyu Zhang, Feng Liu, Shuai Wang, Mingjiang Li
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引用次数: 0

摘要

近年来,语言学习越来越多地受益于计算机辅助语言学习(CALL)技术,尤其是人工智能技术。写作学习中的CALL被公认为语言学习的核心,它正通过自动写作评估(AWE)和自动论文评分(AES)等技术来实现,这些技术在计算机和语言教育领域都有了长足的发展。AWE在一定程度上有效地提高了EFL学生的写作成绩,但这种技术只能以分数的形式提供评估,其中大多数都是基于整体评分的,导致无法提供全面、详细的基于内容的反馈。为了不仅提供写作的多特质特异性评价分数,而且提供详细的写作反馈,我们提出了一个计算机辅助EFL写作学习系统,该系统结合了神经网络模型和两种基于语义的NLP技术MsCAEWL,完全符合写作反馈理论的要求,即多个、连续、及时、清晰,以及多方面指导互动反馈。与AWE基线模型和人类评分器的比较实验结果表明了所提出的系统的优越性和高相关性。MsCAEWL效应验证实验的独立样本t检验和配对样本t检验结果表明,我们提出的系统在提高学生的英语写作水平方面具有显著影响。
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A Multi-Strategy Computer-Assisted EFL Writing Learning System With Deep Learning Incorporated and Its Effects on Learning: A Writing Feedback Perspective
Language learning has increasingly benefited from Computer-Assisted Language Learning (CALL) technologies, especially with Artificial Intelligence involved in recent years. CALL in writing learning acknowledged as the core of language learning is being realized by technologies like Automated Writing Evaluation (AWE), and Automated Essay Scoring (AES), which have developed considerably in both computer and language education fields. AWE has effectively enhanced EFL students’ writing performance to some extent, but such technology can only provide an evaluation in the form of scores, the majority of which are based on holistic scoring, resulting in the inability to provide comprehensive and detailed content-based feedback. In order to provide not only the writing multiple trait-specific evaluation scores, but also detailed writing feedback, we proposed a computer-assisted EFL writing learning system incorporating the neural network models and a couple of semantic-based NLP techniques, MsCAEWL, which fully meets the requirements of writing feedback theory, i.e., multiple, continuous, timely, clear, and multi-aspect guidance interactive feedback. The results of comparison experiments with the AWE baseline models and human raters demonstrated the superiority and the high correlation contained by the proposed system. The independent-sample t-test and paired-sample t-test results of the experiments on MsCAEWL effect validation suggested the significant impact of our proposed system in enhancing students’ EFL writing proficiency.
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来源期刊
Journal of Educational Computing Research
Journal of Educational Computing Research EDUCATION & EDUCATIONAL RESEARCH-
CiteScore
11.90
自引率
6.20%
发文量
69
期刊介绍: The goal of this Journal is to provide an international scholarly publication forum for peer-reviewed interdisciplinary research into the applications, effects, and implications of computer-based education. The Journal features articles useful for practitioners and theorists alike. The terms "education" and "computing" are viewed broadly. “Education” refers to the use of computer-based technologies at all levels of the formal education system, business and industry, home-schooling, lifelong learning, and unintentional learning environments. “Computing” refers to all forms of computer applications and innovations - both hardware and software. For example, this could range from mobile and ubiquitous computing to immersive 3D simulations and games to computing-enhanced virtual learning environments.
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