Small sample validity of latent variable models for correlated binary data

1994 ◽  
Vol 23 (1) ◽  
pp. 243-269 ◽  
Author(s):  
Qu Yinsheng ◽  
Marion R Piedmonte ◽  
George V Williams
2020 ◽  
Vol 69 (4) ◽  
pp. 841-861
Author(s):  
Brice Ozenne ◽  
Patrick M. Fisher ◽  
Esben Budtz‐J⊘rgensen

2021 ◽  
Vol 11 ◽  
Author(s):  
Steffen Zitzmann ◽  
Christoph Helm ◽  
Martin Hecht

Bayesian approaches for estimating multilevel latent variable models can be beneficial in small samples. Prior distributions can be used to overcome small sample problems, for example, when priors that increase the accuracy of estimation are chosen. This article discusses two different but not mutually exclusive approaches for specifying priors. Both approaches aim at stabilizing estimators in such a way that the Mean Squared Error (MSE) of the estimator of the between-group slope will be small. In the first approach, the MSE is decreased by specifying a slightly informative prior for the group-level variance of the predictor variable, whereas in the second approach, the decrease is achieved directly by using a slightly informative prior for the slope. Mathematical and graphical inspections suggest that both approaches can be effective for reducing the MSE in small samples, thus rendering them attractive in these situations. The article also discusses how these approaches can be implemented in Mplus.


Biometrics ◽  
1999 ◽  
Vol 55 (1) ◽  
pp. 258-263 ◽  
Author(s):  
Ming Tan ◽  
Yinsheng Qu ◽  
J. Sunil Rao

2016 ◽  
Vol 27 (8) ◽  
pp. 2249-2263
Author(s):  
Chongyang Duan ◽  
Yingshu Cao ◽  
Lizhi zhou ◽  
Ming T Tan ◽  
Pingyan Chen

Various confidence interval estimators have been developed for differences in proportions resulted from correlated binary data. However, the width of the mostly recommended Tango’s score confidence interval tends to be wide, and the computing burden of exact methods recommended for small-sample data is intensive. The recently proposed rank-based nonparametric method by treating proportion as special areas under receiver operating characteristic provided a new way to construct the confidence interval for proportion difference on paired data, while the complex computation limits its application in practice. In this article, we develop a new nonparametric method utilizing the U-statistics approach for comparing two or more correlated areas under receiver operating characteristics. The new confidence interval has a simple analytic form with a new estimate of the degrees of freedom of n − 1. It demonstrates good coverage properties and has shorter confidence interval widths than that of Tango. This new confidence interval with the new estimate of degrees of freedom also leads to coverage probabilities that are an improvement on the rank-based nonparametric confidence interval. Comparing with the approximate exact unconditional method, the nonparametric confidence interval demonstrates good coverage properties even in small samples, and yet they are very easy to implement computationally. This nonparametric procedure is evaluated using simulation studies and illustrated with three real examples. The simplified nonparametric confidence interval is an appealing choice in practice for its ease of use and good performance.


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