Literature DB >> 33958833

First-Order Learning Models With the GDINA: Estimation With the EM Algorithm and Applications.

Hulya D Yigit1, Jeffrey A Douglas1.   

Abstract

In learning environments, understanding the longitudinal path of learning is one of the main goals. Cognitive diagnostic models (CDMs) for measurement combined with a transition model for mastery may be beneficial for providing fine-grained information about students' knowledge profiles over time. An efficient algorithm to estimate model parameters would augment the practicality of this combination. In this study, the Expectation-Maximization (EM) algorithm is presented for the estimation of student learning trajectories with the GDINA (generalized deterministic inputs, noisy, "and" gate) and some of its submodels for the measurement component, and a first-order Markov model for learning transitions is implemented. A simulation study is conducted to investigate the efficiency of the algorithm in estimation accuracy of student and model parameters under several factors-sample size, number of attributes, number of time points in a test, and complexity of the measurement model. Attribute- and vector-level agreement rates as well as the root mean square error rates of the model parameters are investigated. In addition, the computer run times for converging are recorded. The result shows that for a majority of the conditions, the accuracy rates of the parameters are quite promising in conjunction with relatively short computation times. Only for the conditions with relatively low sample sizes and high numbers of attributes, the computation time increases with a reduction parameter recovery rate. An application using spatial reasoning data is given. Based on the Bayesian information criterion (BIC), the model fit analysis shows that the DINA (deterministic inputs, noisy, "and" gate) model is preferable to the GDINA with these data.
© The Author(s) 2021.

Entities:  

Keywords:  Expectation–Maximization algorithm; cognitive diagnosis models; first-order hidden Markov model; learning trajectories

Year:  2021        PMID: 33958833      PMCID: PMC8042554          DOI: 10.1177/0146621621990746

Source DB:  PubMed          Journal:  Appl Psychol Meas        ISSN: 0146-6216


  7 in total

1.  Measurement of psychological disorders using cognitive diagnosis models.

Authors:  Jonathan L Templin; Robert A Henson
Journal:  Psychol Methods       Date:  2006-09

2.  Consistency of Cluster Analysis for Cognitive Diagnosis: The DINO Model and the DINA Model Revisited.

Authors:  Chia-Yi Chiu; Hans-Friedrich Köhn
Journal:  Appl Psychol Meas       Date:  2015-04-14

3.  A Hidden Markov Model for Learning Trajectories in Cognitive Diagnosis With Application to Spatial Rotation Skills.

Authors:  Yinghan Chen; Steven Andrew Culpepper; Shiyu Wang; Jeffrey Douglas
Journal:  Appl Psychol Meas       Date:  2017-09-05

4.  Assessing Change in Latent Skills Across Time With Longitudinal Cognitive Diagnosis Modeling: An Evaluation of Model Performance.

Authors:  Yasemin Kaya; Walter L Leite
Journal:  Educ Psychol Meas       Date:  2016-07-20       Impact factor: 2.821

5.  A Latent Transition Analysis Model for Assessing Change in Cognitive Skills.

Authors:  Feiming Li; Allan Cohen; Brian Bottge; Jonathan Templin
Journal:  Educ Psychol Meas       Date:  2015-06-15       Impact factor: 2.821

6.  Statistical Analysis of Q-matrix Based Diagnostic Classification Models.

Authors:  Yunxiao Chen; Jingchen Liu; Gongjun Xu; Zhiliang Ying
Journal:  J Am Stat Assoc       Date:  2015       Impact factor: 5.033

7.  Sequential detection of learning in cognitive diagnosis.

Authors:  Sangbeak Ye; Georgios Fellouris; Steven Culpepper; Jeff Douglas
Journal:  Br J Math Stat Psychol       Date:  2016-03-02       Impact factor: 3.380

  7 in total

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