Facilitating self-directed language learning in real-life scene description tasks with automated evaluation

IF 8.9 1区 教育学 Q1 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Computers & Education Pub Date : 2024-06-13 DOI:10.1016/j.compedu.2024.105106
Ruibin Zhao , Yipeng Zhuang , ZhiWei Xie , Philip L.H. Yu
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Abstract

Engaging children in describing real-life scenes provides an effective approach to fostering language production and developing their language skills, enabling them to establish meaningful connections between their language proficiency and authentic contexts. However, for such learning tasks, there has been a lack of research focusing on promoting self-directed language learning by using artificial intelligence techniques, primarily due to the challenges of handling multimodal information involved in such tasks. To address this gap, this study introduced a two-stage automated evaluation method that employed emerging cross-modal matching AI techniques. Firstly, an automated scoring model was developed to evaluate the quality of students' responses to scene description tasks. Compared with manually assigned human scores, our model scored students' descriptions accurately, as evidenced by a small testing mean absolute error of 0.3969 for a total score of 10 points. Based on the scoring results, immediate feedback was then provided to students by generating targeted comments and suggestions. The goal of this feedback was to assist students in progressively improving their descriptions of daily-life scenes, thereby enabling them to practice their language skills independently. To assess the effectiveness of the feedback, a comprehensive investigation was conducted involving 157 students from middle schools in China, and both qualitative and quantitative experimental data were collected from the students. It is found that the quality of students' descriptions was improved significantly with the assistance of immediate feedback. On average, students achieved an increase of 1.48 points in their scores after making revisions based on the feedback. In addition, students reported positive learning experiences and expressed favorable opinions regarding the language learning tasks with the automated evaluation. The findings of this study have significant implications for future research and educational practice. They not only highlighted the potential of emerging cross-modal matching AI techniques in automatically evaluating learning tasks involving multimodal data but also suggested that providing immediate targeted feedback based on automated scoring results can effectively promote students’ self-directed language learning.

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通过自动评估促进真实场景描述任务中的语言自主学习
让儿童参与描述真实生活场景,是促进语言生产和发展语言技能的有效方法,可使他们在语言能力和真实语境之间建立有意义的联系。然而,对于这类学习任务,目前还缺乏利用人工智能技术促进自主语言学习的研究,这主要是由于处理这类任务所涉及的多模态信息所带来的挑战。为弥补这一不足,本研究引入了一种两阶段自动评估方法,采用了新兴的跨模态匹配人工智能技术。首先,开发了一个自动评分模型,用于评估学生对场景描述任务的回答质量。与人工评分相比,我们的模型对学生的描述进行了准确评分,这体现在总分 10 分的测试平均绝对误差为 0.3969,误差较小。根据评分结果,我们通过生成有针对性的评论和建议向学生提供即时反馈。这种反馈的目的是帮助学生逐步改进他们对日常生活场景的描述,从而使他们能够独立练习语言技能。为了评估反馈的有效性,我们对来自中国中学的 157 名学生进行了全面调查,收集了学生的定性和定量实验数据。结果发现,在即时反馈的帮助下,学生的描述质量得到了显著提高。根据反馈进行修改后,学生的分数平均提高了 1.48 分。此外,学生们还报告了积极的学习体验,并对自动评价下的语言学习任务表达了良好的看法。本研究的结果对未来研究和教育实践具有重要意义。它们不仅凸显了新兴的跨模态匹配人工智能技术在自动评估涉及多模态数据的学习任务方面的潜力,还表明根据自动评分结果提供即时的有针对性的反馈能有效促进学生的语言自主学习。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Computers & Education
Computers & Education 工程技术-计算机:跨学科应用
CiteScore
27.10
自引率
5.80%
发文量
204
审稿时长
42 days
期刊介绍: Computers & Education seeks to advance understanding of how digital technology can improve education by publishing high-quality research that expands both theory and practice. The journal welcomes research papers exploring the pedagogical applications of digital technology, with a focus broad enough to appeal to the wider education community.
期刊最新文献
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