为大规模 L2 写作评估建立分析分数档案:以 CET-4 写作测试为例

IF 4.2 1区 文学 Q1 EDUCATION & EDUCATIONAL RESEARCH Assessing Writing Pub Date : 2024-02-19 DOI:10.1016/j.asw.2024.100826
Shaoyan Zou , Xun Yan , Jason Fan
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引用次数: 0

摘要

本研究强调了根据具体的教学和学习环境调整评估的重要性,从而满足了大规模中级写作评估的关键需求。研究以中国的 CET-4 写作测试为重点,分两个阶段展开。在第一阶段,针对 CET-4 写作测试设计的经验性分析评分量表得到了严格验证。21 名评分员使用该量表对 30 篇文章进行了评分,并对评分数据进行了多面拉施模型(MFRM)分析。结果表明,该量表在有效区分考生的写作成绩、确保评分者之间的一致性以及减少评分者在个人和小组层面的差异方面具有很强的稳健性。第二阶段扩大了研究范围,将经过验证的量表用于对 142 份 CET-4 作文答卷进行评分。利用层次分析法和 K-Means 聚类分析法,该阶段揭示了三种不同的分数特征。这些发现对于 CET-4 写作测试和其他 L2 大规模写作评估都具有重要意义。从理论上讲,本研究引入了一个视角,旨在加深我们对学习者在大规模 L2 写作评估中的表现的理解。在方法论上,本研究提出了一个框架,将评分量表的验证与不同分数群的识别结合起来,从而为根据特定的学习环境定制评估提供更详细的解决方案。
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Establishing analytic score profiles for large-scale L2 writing assessment: The case of the CET-4 writing test

This study addresses a critical need in large-scale L2 writing assessment by emphasizing the significance of tailoring assessments to specific teaching and learning contexts. Focusing on the CET-4 writing test in China, the research unfolded in two phases. In Phase I, an empirically-developed analytic rating scale designed for the CET-4 writing test was rigorously validated. Twenty-one raters used this scale to rate 30 essays, and Many-Facets Rasch Model (MFRM) analysis was performed on the rating data. The outcomes demonstrate the scale’s robustness in effectively differentiating examinees’ writing performance, ensuring consistency among raters, and mitigating rater variation at both individual and group level. Phase II extends the research scope by applying the validated scale to score 142 CET-4 writing scripts. Utilizing Hierarchical and K-Means cluster analyses, this phase unveils three distinct score profiles. These findings are significant for both the CET-4 writing test and other L2 large-scale writing assessment. Theoretically, this study introduces a perspective that aims to enhance our understanding of learners’ performance in large-scale L2 writing assessment. Methodologically, this study presents a framework that integrates the validation of the rating scale with the identification of distinct score clusters, thus aiming to provide a more detailed solution for tailoring assessments to specific learning contexts.

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来源期刊
Assessing Writing
Assessing Writing Multiple-
CiteScore
6.00
自引率
17.90%
发文量
67
期刊介绍: Assessing Writing is a refereed international journal providing a forum for ideas, research and practice on the assessment of written language. Assessing Writing publishes articles, book reviews, conference reports, and academic exchanges concerning writing assessments of all kinds, including traditional (direct and standardised forms of) testing of writing, alternative performance assessments (such as portfolios), workplace sampling and classroom assessment. The journal focuses on all stages of the writing assessment process, including needs evaluation, assessment creation, implementation, and validation, and test development.
期刊最新文献
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