Identifying Disengaged Responding in Multiple-Choice Items: Extending a Latent Class Item Response Model With Novel Process Data Indicators.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS
ACS Applied Bio Materials Pub Date : 2024-04-01 Epub Date: 2023-04-29 DOI:10.1177/00131644231169211
Jana Welling, Timo Gnambs, Claus H Carstensen
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引用次数: 0

Abstract

Disengaged responding poses a severe threat to the validity of educational large-scale assessments, because item responses from unmotivated test-takers do not reflect their actual ability. Existing identification approaches rely primarily on item response times, which bears the risk of misclassifying fast engaged or slow disengaged responses. Process data with its rich pool of additional information on the test-taking process could thus be used to improve existing identification approaches. In this study, three process data variables-text reread, item revisit, and answer change-were introduced as potential indicators of response engagement for multiple-choice items in a reading comprehension test. An extended latent class item response model for disengaged responding was developed by including the three new indicators as additional predictors of response engagement. In a sample of 1,932 German university students, the extended model indicated a better model fit than the baseline model, which included item response time as only indicator of response engagement. In the extended model, both item response time and text reread were significant predictors of response engagement. However, graphical analyses revealed no systematic differences in the item and person parameter estimation or item response classification between the models. These results suggest only a marginal improvement of the identification of disengaged responding by the new indicators. Implications of these results for future research on disengaged responding with process data are discussed.

识别多选项目中的脱离响应:用新的过程数据指标扩展潜在类项目响应模型
脱离接触的回答对教育大规模评估的有效性构成了严重威胁,因为没有动机的考生的项目回答并不能反映他们的实际能力。现有的识别方法主要依赖于项目响应时间,这会带来对快速响应或慢速响应进行错误分类的风险。因此,过程数据及其关于考试过程的丰富附加信息库可用于改进现有的识别方法。在这项研究中,引入了三个过程数据变量——文本重读、项目重访和答案变化——作为阅读理解测试中多项选择题反应参与的潜在指标。通过将三个新指标作为反应参与的额外预测因素,开发了一个用于脱离反应的扩展潜在类别项目反应模型。在1932名德国大学生的样本中,扩展模型显示出比基线模型更好的模型拟合度,基线模型将项目反应时间作为反应参与度的唯一指标。在扩展模型中,项目反应时间和文本重读都是反应参与的重要预测因素。然而,图形分析显示,模型之间在项目和个人参数估计或项目反应分类方面没有系统性差异。这些结果表明,新指标对脱离反应的识别仅略有改善。讨论了这些结果对未来研究过程数据脱离响应的影响。
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
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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