This paper discusses and illustrates the method of regression calibration. This is a straightforward technique for fitting models with additive measurement error. We present this discussion in terms of generalized linear models (GLMs) following the notation defined in Hardin and Carroll (2003). Discussion will include specified measurement error, measurement error estimated by replicate error-prone proxies, and measurement error estimated by instrumental variables. The discussion focuses on software developed as part of a small business innovation research (SBIR) grant from the National Institutes of Health (NIH)
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
Graduation date: 1990This thesis considers the problem of estimating the linear\ud parameters of gen...
Generalized linear models with covariate measurement error can be estimated by maximum likelihood us...
This paper discusses and illustrates the method of regression calibration. This is a straightforward...
Abstract. This paper discusses and illustrates the method of regression calibra-tion. This is a stra...
This paper introduces additive measurement error in a generalized linear-model context. We discuss t...
This paper introduces additive measurement error in a generalized linear-model context. We discuss t...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
This paper describes an EM algorithm for maximum likelihood estimation in generalized linear models ...
This paper derives and gives explicit formulas for a derived sandwich variance estimate. This varian...
This paper derives and gives explicit formulas for a derived sandwich variance estimate. This varian...
The analyses of clinical and epidemiologic studies are often based on some kind of regression analys...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
Abstract. Generalized linear models with covariate measurement error can be estimated by maximum lik...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
Graduation date: 1990This thesis considers the problem of estimating the linear\ud parameters of gen...
Generalized linear models with covariate measurement error can be estimated by maximum likelihood us...
This paper discusses and illustrates the method of regression calibration. This is a straightforward...
Abstract. This paper discusses and illustrates the method of regression calibra-tion. This is a stra...
This paper introduces additive measurement error in a generalized linear-model context. We discuss t...
This paper introduces additive measurement error in a generalized linear-model context. We discuss t...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
We discuss and illustrate the method of simulation extrapolation for fitting models with additive me...
This paper describes an EM algorithm for maximum likelihood estimation in generalized linear models ...
This paper derives and gives explicit formulas for a derived sandwich variance estimate. This varian...
This paper derives and gives explicit formulas for a derived sandwich variance estimate. This varian...
The analyses of clinical and epidemiologic studies are often based on some kind of regression analys...
In this thesis we study the effect of regressors measured with an error on an estimated coefficients...
Abstract. Generalized linear models with covariate measurement error can be estimated by maximum lik...
Measurement error biases OLS results. When the measurement error variance in absolute or relative (r...
Graduation date: 1990This thesis considers the problem of estimating the linear\ud parameters of gen...
Generalized linear models with covariate measurement error can be estimated by maximum likelihood us...