Publication | Closed Access
Simulation-Extrapolation Estimation in Parametric Measurement Error Models
745
Citations
18
References
1994
Year
Parameter EstimationAdditional Measurement ErrorEngineeringMeasurementEducationSimulationUncertainty QuantificationCalibrationMeasurement Error VarianceBiostatisticsSimulation-extrapolation EstimationEstimation TheoryStatisticsEstimation StatisticMeasurement ErrorMeasurement ModelsEconometricsLogistic RegressionStatistical InferenceSemi-nonparametric Estimation
Abstract We describe a simulation-based method of inference for parametric measurement error models in which the measurement error variance is known or at least well estimated. The method entails adding additional measurement error in known increments to the data, computing estimates from the contaminated data, establishing a trend between these estimates and the variance of the added errors, and extrapolating this trend back to the case of no measurement error. We show that the method is equivalent or asymptotically equivalent to method-of-moments estimation in linear measurement error modeling. Simulation studies are presented showing that the method produces estimators that are nearly asymptotically unbiased and efficient in standard and nonstandard logistic regression models. An oversimplified but fairly accurate description of the method is that it is method-of-moments estimation using Monte Carlo-derived estimating equations.
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