On latent-variable model misspecification in structural measurement error models for binary response |
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Authors: | Huang Xianzheng Tebbs Joshua M |
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Affiliation: | Department of Statistics, University of South Carolina, Columbia, South Carolina 29208, U.S.A. |
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Abstract: | Summary . We consider structural measurement error models for a binary response. We show that likelihood-based estimators obtained from fitting structural measurement error models with pooled binary responses can be far more robust to covariate measurement error in the presence of latent-variable model misspecification than the corresponding estimators from individual responses. Furthermore, despite the loss in information, pooling can provide improved parameter estimators in terms of mean-squared error. Based on these and other findings, we create a new diagnostic method to detect latent-variable model misspecification in structural measurement error models with individual binary response. We use simulation and data from the Framingham Heart Study to illustrate our methods. |
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Keywords: | Group testing Latent variable Measurement error Pooled response Reliability ratio Robustness Simulation extrapolation |
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