Hierarchical Diagnostic Classification Modeling of Reading Comprehension

The Hierarchical Diagnostic Classification Model (HDCM) reflects on the sequences of the presentation of the essential materials and attributes to answer the items of a test correctly. In this study, a foreign language reading comprehension test was analyzed employing HDCM and the generalized determ...

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Main Author: Mona Tabatabaee-Yazdi
Format: Article
Language:English
Published: SAGE Publishing 2020-06-01
Series:SAGE Open
Online Access:https://doi.org/10.1177/2158244020931068
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spelling doaj-151e1f3785ca45158466b803b404418e2020-11-25T03:01:39ZengSAGE PublishingSAGE Open2158-24402020-06-011010.1177/2158244020931068Hierarchical Diagnostic Classification Modeling of Reading ComprehensionMona Tabatabaee-Yazdi0Tabaran Institute of Higher Education, Mashhad, IranThe Hierarchical Diagnostic Classification Model (HDCM) reflects on the sequences of the presentation of the essential materials and attributes to answer the items of a test correctly. In this study, a foreign language reading comprehension test was analyzed employing HDCM and the generalized deterministic-input, noisy and gate (G-DINA) model to determine and compare respondents’ mastery profiles in the test’s predefined skills and to illustrate the relationships among the attributes involved in the test to capture the influence of sequential teaching of materials on increasing the probability of getting an item a correct answer. Furthermore, Differential Item Functioning (DIF) analysis was applied to detect whether the test functions as a reason for the gender gap in participants’ achievement. Finally, classification consistency and accuracy indices are studied. The results showed that the G-DINA and one of the HDCMs fit the data well. However, although the results of HDCM showed the existence of attribute dependencies in the reading comprehension test, the relative fit indices highlight a significant difference between the G-DINA and HDCM, favoring G-DINA. Moreover, results indicate that there is a significant difference between males and females in six items in favor of females. Besides, classification consistency and accuracy indices specify that the Iranian University Entrance Examination holds a 71% chance of categorizing a randomly selected test taker consistently on two distinct test settings and a 78% likelihood of accurately classifying any randomly selected student into the true latent classes. As a result, it can be concluded that the Iranian University Entrance Examination can be considered as a valid and reliable test.https://doi.org/10.1177/2158244020931068
collection DOAJ
language English
format Article
sources DOAJ
author Mona Tabatabaee-Yazdi
spellingShingle Mona Tabatabaee-Yazdi
Hierarchical Diagnostic Classification Modeling of Reading Comprehension
SAGE Open
author_facet Mona Tabatabaee-Yazdi
author_sort Mona Tabatabaee-Yazdi
title Hierarchical Diagnostic Classification Modeling of Reading Comprehension
title_short Hierarchical Diagnostic Classification Modeling of Reading Comprehension
title_full Hierarchical Diagnostic Classification Modeling of Reading Comprehension
title_fullStr Hierarchical Diagnostic Classification Modeling of Reading Comprehension
title_full_unstemmed Hierarchical Diagnostic Classification Modeling of Reading Comprehension
title_sort hierarchical diagnostic classification modeling of reading comprehension
publisher SAGE Publishing
series SAGE Open
issn 2158-2440
publishDate 2020-06-01
description The Hierarchical Diagnostic Classification Model (HDCM) reflects on the sequences of the presentation of the essential materials and attributes to answer the items of a test correctly. In this study, a foreign language reading comprehension test was analyzed employing HDCM and the generalized deterministic-input, noisy and gate (G-DINA) model to determine and compare respondents’ mastery profiles in the test’s predefined skills and to illustrate the relationships among the attributes involved in the test to capture the influence of sequential teaching of materials on increasing the probability of getting an item a correct answer. Furthermore, Differential Item Functioning (DIF) analysis was applied to detect whether the test functions as a reason for the gender gap in participants’ achievement. Finally, classification consistency and accuracy indices are studied. The results showed that the G-DINA and one of the HDCMs fit the data well. However, although the results of HDCM showed the existence of attribute dependencies in the reading comprehension test, the relative fit indices highlight a significant difference between the G-DINA and HDCM, favoring G-DINA. Moreover, results indicate that there is a significant difference between males and females in six items in favor of females. Besides, classification consistency and accuracy indices specify that the Iranian University Entrance Examination holds a 71% chance of categorizing a randomly selected test taker consistently on two distinct test settings and a 78% likelihood of accurately classifying any randomly selected student into the true latent classes. As a result, it can be concluded that the Iranian University Entrance Examination can be considered as a valid and reliable test.
url https://doi.org/10.1177/2158244020931068
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