Correction for Item Response Theory Latent Trait Measurement Error in Linear Mixed Effects Models

被引:0
作者
Chun Wang
Gongjun Xu
Xue Zhang
机构
[1] University of Washington,Measurement and Statistics, College of Education
[2] University of Michigan,undefined
[3] Northeast Normal University,undefined
来源
Psychometrika | 2019年 / 84卷
关键词
item response theory; measurement error; marginal maximum likelihood estimation; expectation–maximization estimation; two-stage estimation;
D O I
暂无
中图分类号
学科分类号
摘要
When latent variables are used as outcomes in regression analysis, a common approach that is used to solve the ignored measurement error issue is to take a multilevel perspective on item response modeling (IRT). Although recent computational advancement allows efficient and accurate estimation of multilevel IRT models, we argue that a two-stage divide-and-conquer strategy still has its unique advantages. Within the two-stage framework, three methods that take into account heteroscedastic measurement errors of the dependent variable in stage II analysis are introduced; they are the closed-form marginal MLE, the expectation maximization algorithm, and the moment estimation method. They are compared to the naïve two-stage estimation and the one-stage MCMC estimation. A simulation study is conducted to compare the five methods in terms of model parameter recovery and their standard error estimation. The pros and cons of each method are also discussed to provide guidelines for practitioners. Finally, a real data example is given to illustrate the applications of various methods using the National Educational Longitudinal Survey data (NELS 88).
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页码:673 / 700
页数:27
相关论文
共 133 条
[21]  
Cai L(2003)Bayesian modeling of measurement error in predictor variables using item response theory Psychometrika 68 169-523
[22]  
Chang H(1970)A family of variable metric updates derived by variational means Mathematics of Computation 24 23-406
[23]  
Stout W(1997)Why don’t schools and teachers seem to matter? Assessing the impact of unobservables on educational productivity The Journal of Human Resources 32 505-261
[24]  
Cohen AS(2005)Effects of teachers’ mathematical knowledge for teaching on student achievement American Educational Research Journal 42 371-202
[25]  
Bottge BA(2007)Early-grade retention and children’s reading and math learning in elementary years Educational Evaluation and Policy Analysis 29 239-393
[26]  
Wells CS(2018)Evaluation of two methods for modeling measurement errors when testing interaction effects with observed composite scores Educational and Psychological Measurement 78 181-93
[27]  
De Fraine B(1999)Effects of remarriage following divorce on the academic achievement of children Journal of Youth and Adolescence 28 385-37
[28]  
Van Damme J(2001)Item analysis by the hierarchical generalized linear model Journal of Educational Measurement 38 79-307
[29]  
Onghena P(2012)Test measurement error and inference from value-added models The B. E. Journal of Economic Analysis and Policy 12 1-3088
[30]  
Dempster AP(2015)Fitting a linear–linear piecewise growth mixture model with unknown knots: A comparison of two common approaches to inference Psychological Methods 20 259-1022