Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses

Missing item responses are frequently found in educational large-scale assessment studies. In this article, the Mislevy-Wu item response model is applied for handling nonignorable missing item responses. This model allows that the missingness of an item depends on the item itself and a further laten...

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Main Author: Alexander Robitzsch
Format: Article
Language:English
Published: MDPI AG 2023-06-01
Series:Information
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Online Access:https://www.mdpi.com/2078-2489/14/7/368
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author Alexander Robitzsch
author_facet Alexander Robitzsch
author_sort Alexander Robitzsch
collection DOAJ
description Missing item responses are frequently found in educational large-scale assessment studies. In this article, the Mislevy-Wu item response model is applied for handling nonignorable missing item responses. This model allows that the missingness of an item depends on the item itself and a further latent variable. However, with low to moderate amounts of missing item responses, model parameters for the missingness mechanism are difficult to estimate. Hence, regularized estimation using a fused ridge penalty is applied to the Mislevy-Wu model to stabilize estimation. The fused ridge penalty function is separately defined for multiple-choice and constructed response items because previous research indicated that the missingness mechanisms strongly differed for the two item types. In a simulation study, it turned out that regularized estimation improves the stability of item parameter estimation. The method is also illustrated using international data from the progress in international reading literacy study (PIRLS) 2011 data.
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spelling doaj.art-6023bbcd8abb4959a359a2bc9f60189f2023-11-18T19:46:38ZengMDPI AGInformation2078-24892023-06-0114736810.3390/info14070368Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item ResponsesAlexander Robitzsch0Department of Educational Measurement and Data Science, IPN—Leibniz Institute for Science and Mathematics Education, Olshausenstraße 62, 24118 Kiel, GermanyMissing item responses are frequently found in educational large-scale assessment studies. In this article, the Mislevy-Wu item response model is applied for handling nonignorable missing item responses. This model allows that the missingness of an item depends on the item itself and a further latent variable. However, with low to moderate amounts of missing item responses, model parameters for the missingness mechanism are difficult to estimate. Hence, regularized estimation using a fused ridge penalty is applied to the Mislevy-Wu model to stabilize estimation. The fused ridge penalty function is separately defined for multiple-choice and constructed response items because previous research indicated that the missingness mechanisms strongly differed for the two item types. In a simulation study, it turned out that regularized estimation improves the stability of item parameter estimation. The method is also illustrated using international data from the progress in international reading literacy study (PIRLS) 2011 data.https://www.mdpi.com/2078-2489/14/7/368Mislevy-Wu modelmissing datanonignorable missingnessmissing not at randomitem response modelregularized estimation
spellingShingle Alexander Robitzsch
Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses
Information
Mislevy-Wu model
missing data
nonignorable missingness
missing not at random
item response model
regularized estimation
title Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses
title_full Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses
title_fullStr Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses
title_full_unstemmed Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses
title_short Regularized Mislevy-Wu Model for Handling Nonignorable Missing Item Responses
title_sort regularized mislevy wu model for handling nonignorable missing item responses
topic Mislevy-Wu model
missing data
nonignorable missingness
missing not at random
item response model
regularized estimation
url https://www.mdpi.com/2078-2489/14/7/368
work_keys_str_mv AT alexanderrobitzsch regularizedmislevywumodelforhandlingnonignorablemissingitemresponses