Unsupervised learning approaches, such as Partial Least Squares, can be used to investigate relationships between multiple sources of data, such as neuroimaging and behavioural data. In cases of high-dimensional datasets with limited number of examples (e.g. neuroimaging data) there is a need for regularisation to enable the solution of the ill-posed problem and prevent overfitting. Different approaches have been proposed to optimise the regularisation parameters in unsupervised models, however, so far, there has been no comparison between the different approaches using the same data. In this work, two optimisation frameworks (i.e. a permutation and a train/test framework) were compared using sparse PLS to investigate associations between b...
International audienceIn this article we describe a novel method for regularized regression and appl...
Structured sparse methods have received significant attention in neuroimaging. These methods allow t...
International audienceWe study the problem of statistical estimation with a signal known to be spars...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
Background Supervised classification machine learning algorithms may have limitations when studying...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
Canonical Correlation Analysis (CCA) and Partial Least Squares (PLS) are powerful multivariate metho...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
International audienceIn this article we describe a novel method for regularized regression and appl...
The heterogeneity of neurological and mental disorders has been a key confound in disease understand...
Abstract Partial least squares (PLS) has become a respected and meaningful soft modeling analysis t...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
A key goal of cognitive neuroscience is to find simple and direct connections between brain and beha...
International audienceIn this article we describe a novel method for regularized regression and appl...
Structured sparse methods have received significant attention in neuroimaging. These methods allow t...
International audienceWe study the problem of statistical estimation with a signal known to be spars...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
Background Supervised classification machine learning algorithms may have limitations when studying...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
Canonical Correlation Analysis (CCA) and Partial Least Squares (PLS) are powerful multivariate metho...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
Background: In 2009, the National Institute of Mental Health launched the Research Domain Criteria (...
International audienceIn this article we describe a novel method for regularized regression and appl...
The heterogeneity of neurological and mental disorders has been a key confound in disease understand...
Abstract Partial least squares (PLS) has become a respected and meaningful soft modeling analysis t...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
A key goal of cognitive neuroscience is to find simple and direct connections between brain and beha...
International audienceIn this article we describe a novel method for regularized regression and appl...
Structured sparse methods have received significant attention in neuroimaging. These methods allow t...
International audienceWe study the problem of statistical estimation with a signal known to be spars...