2023
DOI: 10.1371/journal.pone.0283798
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A general algorithm for error-in-variables regression modelling using Monte Carlo expectation maximization

Abstract: In regression modelling, measurement error models are often needed to correct for uncertainty arising from measurements of covariates/predictor variables. The literature on measurement error (or errors-in-variables) modelling is plentiful, however, general algorithms and software for maximum likelihood estimation of models with measurement error are not as readily available, in a form that they can be used by applied researchers without relatively advanced statistical expertise. In this study, we develop a nov… Show more

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