artículo
Inference in multivariate regression models with measurement errors
Fecha
2023Registro en:
10.1080/00949655.2023.2166938
1563-5163
0094-9655
1563-5163
SCOPUS_ID:85147164921
Autor
Sandoval Moreno, Gabriela
Galea Rojas, Manuel Jesús
Arellano Valle, Reinaldo Boris
Institución
Resumen
Multivariate regression models are helpful in many fields. However, independent variables (covariates or predictors) could be measured with error. That implies the necessity of considering a new kind of model called Multivariate Regression Models with Measurement Error (MRMMEs). This paper aims to carry out a statistical analysis of these models. We include estimation, hypothesis testing, model assessment, and influence diagnostics. Furthermore, besides considering the classical assumption of the normal distribution, we use maximum likelihood for the whole inference process. Finally, we study the developed approach's performance through simulation experiments and re-analyze the human lung function dataset presented in the literature to illustrate the methodology.