A hierarchical latent response model for inferences about examinee engagement in terms of guessing and item-level non-response.

Esther Ulitzsch, Matthias von Davier, S. Pohl
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引用次数: 47

Abstract

In low-stakes assessments, test performance has few or no consequences for examinees themselves, so that examinees may not be fully engaged when answering the items. Instead of engaging in solution behaviour, disengaged examinees might randomly guess or generate no response at all. When ignored, examinee disengagement poses a severe threat to the validity of results obtained from low-stakes assessments. Statistical modelling approaches in educational measurement have been proposed that account for non-response or for guessing, but do not consider both types of disengaged behaviour simultaneously. We bring together research on modelling examinee engagement and research on missing values and present a hierarchical latent response model for identifying and modelling the processes associated with examinee disengagement jointly with the processes associated with engaged responses. To that end, we employ a mixture model that identifies disengagement at the item-by-examinee level by assuming different data-generating processes underlying item responses and omissions, respectively, as well as response times associated with engaged and disengaged behaviour. By modelling examinee engagement with a latent response framework, the model allows assessing how examinee engagement relates to ability and speed as well as to identify items that are likely to evoke disengaged test-taking behaviour. An illustration of the model by means of an application to real data is presented.
基于猜测和项目层面无反应的考生参与推理的层次潜反应模型。
在低风险评估中,考试成绩对考生本身几乎没有影响,因此考生在回答问题时可能不会完全投入。不专注的考生可能会随机猜测或根本没有反应,而不是参与解决问题的行为。如果被忽视,考生脱离会对从低风险评估中获得的结果的有效性构成严重威胁。教育测量中的统计建模方法已被提出用于解释无反应或猜测,但没有同时考虑这两种类型的脱离行为。我们将模拟考生参与和缺失值的研究结合在一起,提出了一个分层潜在反应模型,用于识别和模拟与考生脱离相关的过程以及与参与反应相关的过程。为此,我们采用了一个混合模型,通过假设不同的数据生成过程,分别为项目反应和遗漏,以及与参与和不参与行为相关的响应时间,来识别每个考生层面的脱离。通过用潜在反应框架对考生参与进行建模,该模型可以评估考生参与与能力和速度之间的关系,并识别可能引起不参与考试行为的项目。通过对实际数据的应用,对该模型进行了说明。
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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