Bayesian Estimation and Testing of a Linear Logistic Test Model for Learning during the Test

IF 1.1 4区 教育学 Q3 EDUCATION & EDUCATIONAL RESEARCH
J. H. Lozano, J. Revuelta
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引用次数: 3

Abstract

ABSTRACT The present study proposes a Bayesian approach for estimating and testing the operation-specific learning model, a variant of the linear logistic test model that allows for the measurement of the learning that occurs during a test as a result of the repeated use of the operations involved in the items. The advantages of using a Bayesian framework compared to the traditional frequentist approach are discussed. The application of the model is illustrated with real data from a logical ability test. The results show how the incorporation of previous practice into the linear logistic model improves the fit of the model as well as the prediction of the Rasch item difficulty estimates. The model provides evidence of learning associated with two of the logic operations involved in the items, which supports the hypothesis of practice effects in deductive reasoning tasks.
测试中学习的线性逻辑测试模型的贝叶斯估计和检验
本研究提出了一种贝叶斯方法来估计和测试特定操作的学习模型,这是线性逻辑测试模型的一种变体,允许测量由于重复使用项目中涉及的操作而在测试期间发生的学习。讨论了贝叶斯框架与传统频率分析方法相比的优点。以某逻辑能力测试的实际数据为例说明了该模型的应用。结果表明,将以往的实践纳入线性逻辑模型可以改善模型的拟合以及对Rasch项目难度估计的预测。该模型提供了与项目中涉及的两种逻辑操作相关的学习证据,这支持了演绎推理任务中实践效应的假设。
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来源期刊
CiteScore
2.50
自引率
13.30%
发文量
14
期刊介绍: Because interaction between the domains of research and application is critical to the evaluation and improvement of new educational measurement practices, Applied Measurement in Education" prime objective is to improve communication between academicians and practitioners. To help bridge the gap between theory and practice, articles in this journal describe original research studies, innovative strategies for solving educational measurement problems, and integrative reviews of current approaches to contemporary measurement issues. Peer Review Policy: All review papers in this journal have undergone editorial screening and peer review.
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