Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved variables to model the relation between (typically) two sets of input and output variables, respectively. Several flavors, depending on how the latent variables or components are computed, have been developed over the last years. In this letter, we propose a Bayesian formulation of PLS along with some extensions. In a nutshell, we provide sparsity at the input space level and an automatic estimation of the optimal number of latent components. We follow the variational approach to infer the parameter distributions. We have successfully tested the proposed methods on a synthetic data benchmark and on electrocorticogram data associated with severa...
An increasing number of projects in neuroscience require statistical analysis of high-dimensional da...
In the supervised high dimensional settings with a large number of variables and a low number of ind...
International audienceIn the supervised high dimensional settings with a large number of variables a...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Partial least squares (PLS) regression is a dimension reduction method used in many areas of scienti...
International audienceThis paper proposes a fully Bayesian approach for Least-Squares Temporal Diffe...
Abstract Partial least squares (PLS) regression combines dimensionality reduction and prediction usi...
International audienceThis paper proposes a fully Bayesian approach for Least-Squares Temporal Diffe...
Partial least squares (PLS) has become a respected and meaningful soft modeling analysis...
International audienceThis paper proposes a fully Bayesian approach for Least-Squares Temporal Diffe...
Partial Least Squares (PLS) is a wide class of methods for modeling relations between sets of observ...
An increasing number of projects in neuroscience require statistical analysis of high-dimensional da...
In the supervised high dimensional settings with a large number of variables and a low number of ind...
International audienceIn the supervised high dimensional settings with a large number of variables a...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
Partial least squares (PLS) is a class of methods that makes use of a set of latent or unobserved va...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
New Perspectives in Partial Least Squares and Related Methods shares original, peer-reviewed researc...
Partial least squares (PLS) regression is a dimension reduction method used in many areas of scienti...
International audienceThis paper proposes a fully Bayesian approach for Least-Squares Temporal Diffe...
Abstract Partial least squares (PLS) regression combines dimensionality reduction and prediction usi...
International audienceThis paper proposes a fully Bayesian approach for Least-Squares Temporal Diffe...
Partial least squares (PLS) has become a respected and meaningful soft modeling analysis...
International audienceThis paper proposes a fully Bayesian approach for Least-Squares Temporal Diffe...
Partial Least Squares (PLS) is a wide class of methods for modeling relations between sets of observ...
An increasing number of projects in neuroscience require statistical analysis of high-dimensional da...
In the supervised high dimensional settings with a large number of variables and a low number of ind...
International audienceIn the supervised high dimensional settings with a large number of variables a...