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一种用于重复尝试的认知诊断评估的序列过程模型。

A Sequential Process Model for Cognitive Diagnostic Assessment With Repeated Attempts.

作者信息

Hung Su-Pin, Huang Hung-Yu

机构信息

National Cheng Kung University, Tainan, Taiwan.

University of Taipei, Taipei, Taiwan.

出版信息

Appl Psychol Meas. 2019 Oct;43(7):495-511. doi: 10.1177/0146621618813111. Epub 2018 Dec 12.

Abstract

When diagnostic assessments are administered to examinees, the mastery status of each examinee on a set of specified cognitive skills or attributes can be directly evaluated using cognitive diagnosis models (CDMs). Under certain circumstances, allowing the examinees to have at least one opportunity to correctly answer the questions and assessments, with repeated attempts on the items, provides many potential benefits. A sequential process model can be extended to model repeated attempts in diagnostic assessments. Two formulations of the sequential generalized deterministic-input noisy-"and"-gate (G-DINA) model were developed in this study. The first extension uses the latent transition analysis (LTA) approach to model changes in the attributes over attempts, and the second extension constructs a higher order structure of latent continuous variables and latent attributes to account for the dependences of the attributes over attempts. Accurate model parameter estimation and correct classifications of attributes were observed in a series of simulations using Bayesian estimation. The effectiveness of the developed sequential G-DINA model was demonstrated by fitting real data from a longitudinal mathematical test to the developed model and the longitudinal G-DINA model using the LTA approach. Finally, this article closes by discussing several important issues associated with the developed models and providing suggestions for future directions.

摘要

当对考生进行诊断性评估时,可以使用认知诊断模型(CDM)直接评估每个考生对一组特定认知技能或属性的掌握情况。在某些情况下,允许考生至少有一次机会正确回答问题和评估内容,并对题目进行多次尝试,会带来许多潜在益处。可以扩展一个序列过程模型来对诊断性评估中的多次尝试进行建模。本研究开发了顺序广义确定性输入噪声“与”门(G-DINA)模型的两种形式。第一种扩展使用潜在转变分析(LTA)方法对多次尝试过程中属性的变化进行建模,第二种扩展构建了潜在连续变量和潜在属性的高阶结构,以解释多次尝试过程中属性的依赖性。在一系列使用贝叶斯估计的模拟中,观察到了准确的模型参数估计和属性的正确分类。通过将纵向数学测试的实际数据拟合到所开发的模型以及使用LTA方法的纵向G-DINA模型,证明了所开发的顺序G-DINA模型的有效性。最后,本文通过讨论与所开发模型相关的几个重要问题并为未来方向提供建议来结束。

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本文引用的文献

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Sequential detection of learning in cognitive diagnosis.认知诊断中学习的顺序检测
Br J Math Stat Psychol. 2016 May;69(2):139-58. doi: 10.1111/bmsp.12065. Epub 2016 Mar 2.
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A General Method of Empirical Q-matrix Validation.一种经验性Q矩阵验证的通用方法。
Psychometrika. 2016 Jun;81(2):253-73. doi: 10.1007/s11336-015-9467-8. Epub 2015 May 6.

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