NeurIPS2022
Trimmed Maximum Likelihood Estimation for Robust Generalized Linear Model
Pranjal Awasthi, Abhimanyu Das, Weihao Kong, Rajat Sen
被引用 8 次
摘要
Generalized linear models with covariate measurement error can be estimated by maximum likelihood using gllamm, a program that fits a large class of multilevel latent variable models (Rabe-Hesketh, Skrondal, and Pickles 2004b). The program uses adaptive quadrature to evaluate the log-likelihood, producing more reliable results than many other methods (Rabe-Hesketh, Skrondal, and Pickles 2002) . For a single covariate measured with error (assuming a classical measurement model), we describe a 'wrapper' command cme that calls gllamm to estimate the model. The wrapper makes life easy for the user by accepting a simple syntax and data structure and producing extended and easily interpretable output. The commands for preparing the data and running gllamm can also be obtained from cme and run in a do-file. We first discuss the case where replicate measurements are available and subsequently consider estimation when the measurement error variance is instead assumed known. The latter approach is useful for sensitivity analysis assessing the impact of assuming perfectly measured covariates in generalized linear models. An advantage of using gllamm directly is that the classical covariate measurement error model can be extended in various ways. For instance, we can use nonparametric maximum likelihood estimation (NPMLE) to relax the normality assumption for the true covariate. We can also specify a congeneric measurement model which relaxes the assumption that the repeated measurements are exchangeable replicates by allowing for different measurement scales and error variances.