Partial Least Squares (PLS) is a standard statistical method in chemometrics. It can be considered as an incomplete, or \partial", version of the Least Squares estimator of regres-sion, applicable when high or perfect multicollinearity is present in the predictor variables. The Least Squares estimator is well-known to be an optimal estimator for regression, but only when the error terms are normally distributed. In absence of normality, and in particular when outliers are in the data set, other more robust regression estimators have better properties. In this paper a \partial " version of M-regression estimators will be dened. If an appropri-ate weighting scheme is chosen, partial M-estimators become entirely robust to any type of...
Core argument of the Ph.D. Thesis is Partial Least Squares (PLS), a class of techniques for modellin...
A new regression M-estimator namely modified least squares(MLS) in the class of M-estimators is pres...
Researchers need to consider robust estimation methods when analyzing data in multiple regression. T...
Partial Least Squares (PLS) is a standard statistical method in chemometrics. It can be considered a...
Partial Least Squares (PLS) is a standard statistical method in chemometrics. It can be considered a...
Sparse partial robust M regression is introduced as a new regression method. It is the first dimensio...
The presence of Partial Robust M-Regression (PRM) amongst other Partial Least Squares Regression (PL...
Partial least squares regression (PLS) is a linear regression technique developed to relate many reg...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Due to its simplicity and easy implementation, partial least squares (PLS) serves as an efficient ap...
Regression analysis plays a vital role in many areas of science. Almost all regression analyses rely...
The existing methods for tting mixture regression models assume a normal dis-tribution for error and...
Partial least squares regression is a very powerful multivariate regression technique to model multi...
Partial robust M regression (PRM), as well as its sparse counterpart sparse partial robust M regress...
Core argument of the Ph.D. Thesis is Partial Least Squares (PLS), a class of techniques for modellin...
A new regression M-estimator namely modified least squares(MLS) in the class of M-estimators is pres...
Researchers need to consider robust estimation methods when analyzing data in multiple regression. T...
Partial Least Squares (PLS) is a standard statistical method in chemometrics. It can be considered a...
Partial Least Squares (PLS) is a standard statistical method in chemometrics. It can be considered a...
Sparse partial robust M regression is introduced as a new regression method. It is the first dimensio...
The presence of Partial Robust M-Regression (PRM) amongst other Partial Least Squares Regression (PL...
Partial least squares regression (PLS) is a linear regression technique developed to relate many reg...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Outliers can seriously distort the results of statistical analyses and thus threaten the validity of...
Due to its simplicity and easy implementation, partial least squares (PLS) serves as an efficient ap...
Regression analysis plays a vital role in many areas of science. Almost all regression analyses rely...
The existing methods for tting mixture regression models assume a normal dis-tribution for error and...
Partial least squares regression is a very powerful multivariate regression technique to model multi...
Partial robust M regression (PRM), as well as its sparse counterpart sparse partial robust M regress...
Core argument of the Ph.D. Thesis is Partial Least Squares (PLS), a class of techniques for modellin...
A new regression M-estimator namely modified least squares(MLS) in the class of M-estimators is pres...
Researchers need to consider robust estimation methods when analyzing data in multiple regression. T...