A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework

The Expectation-Maximization (EM) algorithm is a method for finding the maximum likelihood estimate of a model in the presence of missing data. Unfortunately, EM does not produce a parameter covariance matrix for standard errors. Both Oakes and Supplemented EM are methods for obtaining the parameter...

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Main Author: Joshua N. Pritikin
Format: Article
Language:English
Published: Taylor & Francis Group 2017-12-01
Series:Cogent Psychology
Subjects:
Online Access:http://dx.doi.org/10.1080/23311908.2017.1279435
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spelling doaj-cdc726e05e7e498998b663b610e8385e2021-07-26T12:59:37ZengTaylor & Francis GroupCogent Psychology2331-19082017-12-014110.1080/23311908.2017.12794351279435A comparison of parameter covariance estimation methods for item response models in an expectation-maximization frameworkJoshua N. Pritikin0Virginia Commonwealth UniversityThe Expectation-Maximization (EM) algorithm is a method for finding the maximum likelihood estimate of a model in the presence of missing data. Unfortunately, EM does not produce a parameter covariance matrix for standard errors. Both Oakes and Supplemented EM are methods for obtaining the parameter covariance matrix. SEM was discovered in 1991 and is implemented in both open-source and commercial item response model estimation software. Oakes, a more recent method discovered in 1999, had not been implemented in item response model software until now. Convergence properties, accuracy, and elapsed time of Oakes and Supplemental EM family algorithms are compared for a diverse selection IFA models. Oakes exhibits the best accuracy and elapsed time among algorithms compared. We recommend that Oakes be made available in item response model estimation software.http://dx.doi.org/10.1080/23311908.2017.1279435parameter covariance matrixoakes direct methodsupplemented em algorithmitem factor analysismonte carlostandard errors
collection DOAJ
language English
format Article
sources DOAJ
author Joshua N. Pritikin
spellingShingle Joshua N. Pritikin
A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
Cogent Psychology
parameter covariance matrix
oakes direct method
supplemented em algorithm
item factor analysis
monte carlo
standard errors
author_facet Joshua N. Pritikin
author_sort Joshua N. Pritikin
title A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
title_short A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
title_full A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
title_fullStr A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
title_full_unstemmed A comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
title_sort comparison of parameter covariance estimation methods for item response models in an expectation-maximization framework
publisher Taylor & Francis Group
series Cogent Psychology
issn 2331-1908
publishDate 2017-12-01
description The Expectation-Maximization (EM) algorithm is a method for finding the maximum likelihood estimate of a model in the presence of missing data. Unfortunately, EM does not produce a parameter covariance matrix for standard errors. Both Oakes and Supplemented EM are methods for obtaining the parameter covariance matrix. SEM was discovered in 1991 and is implemented in both open-source and commercial item response model estimation software. Oakes, a more recent method discovered in 1999, had not been implemented in item response model software until now. Convergence properties, accuracy, and elapsed time of Oakes and Supplemental EM family algorithms are compared for a diverse selection IFA models. Oakes exhibits the best accuracy and elapsed time among algorithms compared. We recommend that Oakes be made available in item response model estimation software.
topic parameter covariance matrix
oakes direct method
supplemented em algorithm
item factor analysis
monte carlo
standard errors
url http://dx.doi.org/10.1080/23311908.2017.1279435
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