info:eu-repo/semantics/article
Error Covariance Penalized Regression: A novel multivariate model combining penalized regression with multivariate error structure
Fecha
2018-06Registro en:
Allegrini, Franco; Braga, Jez W. B.; Moreira, Alessandro C. O.; Olivieri, Alejandro Cesar; Error Covariance Penalized Regression: A novel multivariate model combining penalized regression with multivariate error structure; Elsevier Science; Analytica Chimica Acta; 1011; 6-2018; 20-27
0003-2670
CONICET Digital
CONICET
Autor
Allegrini, Franco
Braga, Jez W. B.
Moreira, Alessandro C. O.
Olivieri, Alejandro Cesar
Resumen
A new multivariate regression model, named Error Covariance Penalized Regression (ECPR) is presented. Following a penalized regression strategy, the proposed model incorporates information about the measurement error structure of the system, using the error covariance matrix (ECM) as a penalization term. Results are reported from both simulations and experimental data based on replicate mid and near infrared (MIR and NIR) spectral measurements. The results for ECPR are better under non-iid conditions when compared with traditional first-order multivariate methods such as ridge regression (RR), principal component regression (PCR) and partial least-squares regression (PLS).