AI Article Synopsis

  • In regression modeling, measurement error models are essential for addressing uncertainty in predictor variables, but general tools for maximum likelihood estimation in such models are limited and often require advanced statistical knowledge.
  • A new algorithm is developed that allows researchers to include measurement error in various regression models using the Monte Carlo Expectation-Maximization (MCEM) technique, enabling them to adapt existing models easily.
  • The method is validated through simulations across different model types and comes with a software package in R (refitME) that simplifies the process of adjusting fitted models for measurement errors.

Article 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 novel algorithm for measurement error modelling, which could in principle take any regression model fitted by maximum likelihood, or penalised likelihood, and extend it to account for uncertainty in covariates. This is achieved by exploiting an interesting property of the Monte Carlo Expectation-Maximization (MCEM) algorithm, namely that it can be expressed as an iteratively reweighted maximisation of complete data likelihoods (formed by imputing the missing values). Thus we can take any regression model for which we have an algorithm for (penalised) likelihood estimation when covariates are error-free, nest it within our proposed iteratively reweighted MCEM algorithm, and thus account for uncertainty in covariates. The approach is demonstrated on examples involving generalized linear models, point process models, generalized additive models and capture-recapture models. Because the proposed method uses maximum (penalised) likelihood, it inherits advantageous optimality and inferential properties, as illustrated by simulation. We also study the model robustness of some violations in predictor distributional assumptions. Software is provided as the refitME package on R, whose key function behaves like a refit() function, taking a fitted regression model object and re-fitting with a pre-specified amount of measurement error.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC10069785PMC
http://journals.plos.org/plosone/article?id=10.1371/journal.pone.0283798PLOS

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