Partial Least Squares regression (PLS) is a multivariate technique developed to perform regression in the case of multivariate responses when multicollinearity, redundancy and noise affect the predictors. In spite of several efforts have been made to extend PLS to classification problems, this is still a current field of research. In the present study, a new technique called PLS for classification is introduced to solve the general G-class problem. It is developed within a self-consistent framework based on linear algebra and on the theory of compositional data. After the introduction of the notion of probability-data vector, the space of the predictors and that of the conditional probabilities are linked, and a well-defined least squares p...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Partial least squares (PLS) is a method for building regression models between independent and depen...
Classification of multivariate functional data is explored in this paper, particularly for functiona...
Partial Least Squares regression (PLS) is a multivariate technique developed to perform regression i...
Pls regression is a recent technique that generalizes and combines features from principal component...
Two multivariable problems of general interest, are factor analysis and regression. This paper exami...
Partial least squares (PLS) approach is proposed for linear discriminant analysis (LDA) when predict...
Partial Least Squares (PLS) is a wide class of methods for modeling relations between sets of observ...
ABSTRACT This paper presents a methodology that eliminates multicollinearity of the predictors vari...
Core argument of the Ph.D. Thesis is Partial Least Squares (PLS), a class of techniques for modellin...
PLS univariate regression is a model linking a dependent variable y to a set X={x1, , xp} of (numer...
Abstract: Linear Discriminant Analysis leads to unstable models and poor predictions in the presence...
Partial least squares (PLS) regression on an L2-continuous stochastic process is an extension of the...
Partial least squares (PLS) is a method for building regression models between independent and depen...
Partial Least Squares Regression (PLS-R) method is regression linear technique for multivariate pred...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Partial least squares (PLS) is a method for building regression models between independent and depen...
Classification of multivariate functional data is explored in this paper, particularly for functiona...
Partial Least Squares regression (PLS) is a multivariate technique developed to perform regression i...
Pls regression is a recent technique that generalizes and combines features from principal component...
Two multivariable problems of general interest, are factor analysis and regression. This paper exami...
Partial least squares (PLS) approach is proposed for linear discriminant analysis (LDA) when predict...
Partial Least Squares (PLS) is a wide class of methods for modeling relations between sets of observ...
ABSTRACT This paper presents a methodology that eliminates multicollinearity of the predictors vari...
Core argument of the Ph.D. Thesis is Partial Least Squares (PLS), a class of techniques for modellin...
PLS univariate regression is a model linking a dependent variable y to a set X={x1, , xp} of (numer...
Abstract: Linear Discriminant Analysis leads to unstable models and poor predictions in the presence...
Partial least squares (PLS) regression on an L2-continuous stochastic process is an extension of the...
Partial least squares (PLS) is a method for building regression models between independent and depen...
Partial Least Squares Regression (PLS-R) method is regression linear technique for multivariate pred...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Partial least squares (PLS) is a method for building regression models between independent and depen...
Classification of multivariate functional data is explored in this paper, particularly for functiona...