Abstract We consider the assessment of local influence for generalized linear models when the covariates are measured with errors. We show how to evaluate the effect that perturbations to the data, case weights, and model assumptions may have on the parameter estimates. Based on the likelihood displacement functions, some useful influence diagnostics are derived. Two examples illustrate application of the proposed diagnostics and assessment of the measurement error assumptions.
Mário de CastroManuel GaleaHeleno Bolfarine
Najmieh MaksaeiAbdolrahman RasekhBabak Babadi
Li‐Shan HuangHongkun WangChristopher Cox