Diagnosing Chinese EFL learners’ writing ability using polytomous cognitive diagnostic models

多向拉希模型 心理学 优势和劣势 补习教育 评定量表 认知 写作评估 自然语言处理 项目反应理论 认知心理学 数学教育 计算机科学 心理测量学 发展心理学 社会心理学 神经科学
作者
Xiaoting Shi,Xiaomei Ma,Wenbo Du,Xuliang Gao
出处
期刊:Language Testing [SAGE Publishing]
卷期号:41 (1): 109-134 被引量:5
标识
DOI:10.1177/02655322231162840
摘要

Cognitive diagnostic assessment (CDA) intends to identify learners’ strengths and weaknesses in latent cognitive attributes to provide personalized remedial instructions. Previous CDA studies on English as a Foreign Language (EFL)/English as a Second Language (ESL) writing have adopted dichotomous cognitive diagnostic models (CDMs) to analyze data from checklists using simple yes/no judgments. Compared to descriptors with multiple levels, descriptors with only yes/no judgments were considered too absolute, potentially resulting in misjudgment of learners’ writing ability. However, few studies have used polytomous CDMs to analyze graded response data from rating scales to diagnose writing ability. This study applied polytomous CDMs to diagnose 1166 EFL learners’ writing performance scored with a three-level rating scale. The sG-DINA model was selected after comparing model-data fit statistics of multiple polytomous CDMs. The results of classification accuracy indices and item discrimination indices further demonstrated that sG-DINA had good performance on identifying learners’ strengths and weaknesses. The generated diagnostic information at group and individual levels was further synthesized into a personalized diagnostic report, although its usefulness still requires further investigation. The findings provided evidence for the feasibility of applying polytomous CDM in EFL writing assessment.
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