We address the problem of selecting the best linear unbiased predictor (BLUP) of the latent value (e.g., serum glucose fasting level) of sample subjects with heteroskedastic measurement errors. Using a simple example, we compare the usual mixed model BLUP to a similar predictor based on a mixed model framed in a finite population (FPMM) setup with two sources of variability, the first of which corresponds to simple random sampling and the second, to heteroskedastic measurement errors. Under this last approach, we show that when measurement errors are subject-specific, the BLUP shrinkage constants are based on a pooled measurement error variance as opposed to the individual ones generally considered for the usual mixed model BLUP. In contras...
Godambe (1955) give a general finite population sampling model and proved that a best linear unbiase...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
When measurement error is present among the covariates of a regression model it can cause bias in th...
We address the problem of selecting the best linear unbiased predictor (BLUP) of the latent value (e...
It is widely acknowledged that the predictive performance of clinical prediction models should be st...
Mixed models may be defined with or without reference to sampling, and can be used to predict realiz...
Measures of biologic and behavioural variables on a patient often estimate longer term latent values...
We develop a design-based prediction approach to estimate the finite population mean in a simple set...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
Consideramos a predição ótima de valores latentes com base em dados sujeitos a erros de medida endóg...
Measures of biologic and behavioural variables on a patient often estimate longer term latent values...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
In many situations there is interest in parameters (e.g., mean) associated with the response distrib...
Paper presented at the 5th Strathmore International Mathematics Conference (SIMC 2019), 12 - 16 Augu...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
Godambe (1955) give a general finite population sampling model and proved that a best linear unbiase...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
When measurement error is present among the covariates of a regression model it can cause bias in th...
We address the problem of selecting the best linear unbiased predictor (BLUP) of the latent value (e...
It is widely acknowledged that the predictive performance of clinical prediction models should be st...
Mixed models may be defined with or without reference to sampling, and can be used to predict realiz...
Measures of biologic and behavioural variables on a patient often estimate longer term latent values...
We develop a design-based prediction approach to estimate the finite population mean in a simple set...
Prediction of random effects is an important problem with expanding applications. In the simplest co...
Consideramos a predição ótima de valores latentes com base em dados sujeitos a erros de medida endóg...
Measures of biologic and behavioural variables on a patient often estimate longer term latent values...
Objectives: The aim of this study was to quantify the impact of predictor measurement heterogeneity ...
In many situations there is interest in parameters (e.g., mean) associated with the response distrib...
Paper presented at the 5th Strathmore International Mathematics Conference (SIMC 2019), 12 - 16 Augu...
A mixture measurement error model built upon skew normal distributions and normal distributions is d...
Godambe (1955) give a general finite population sampling model and proved that a best linear unbiase...
Recent minimum sample size formula (Riley et al.) for developing clinical prediction models help ens...
When measurement error is present among the covariates of a regression model it can cause bias in th...