When data are sparse and/or predictors multicollinear, current implementation of sparse partial least squares (SPLS) does not give estimates for non-selected predictors nor provide a measure of inference. In response, an approach termed “all-possible” SPLS is proposed, which fits a SPLS model for all tuning parameter values across a set grid. Noted is the percentage of time a given predictor is chosen, as well as the average non-zero parameter estimate. Using a “large” number of multicollinear predictors, simulation confirmed variables not associated with the outcome were least likely to be chosen as sparsity increased across the grid of tuning parameters, while the opposite was true for those strongly associated. Lastly, variables with a w...
[EN] N-PLS, as the natural extension of PLS to N-way structures, tries to maximize the covariance be...
[EN] N-PLS, as the natural extension of PLS to N-way structures, tries to maximize the covariance be...
Background Supervised classification machine learning algorithms may have limitations when studying...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
International audienceIn the supervised high dimensional settings with a large number of variables a...
International audienceIn the supervised high dimensional settings with a large number of variables a...
International audienceIn the supervised high dimensional settings with a large number of variables a...
International audienceIn the supervised high dimensional settings with a large number of variables a...
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...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
International audienceIn the supervised high dimensional settings with a large number of variables a...
Partial least squares (PLS) regression is a dimension reduction method used in many areas of scienti...
[EN] N-PLS, as the natural extension of PLS to N-way structures, tries to maximize the covariance be...
[EN] N-PLS, as the natural extension of PLS to N-way structures, tries to maximize the covariance be...
Background Supervised classification machine learning algorithms may have limitations when studying...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
When data are sparse and/or predictors multicollinear, current implementation of sparse partial leas...
International audienceIn the supervised high dimensional settings with a large number of variables a...
International audienceIn the supervised high dimensional settings with a large number of variables a...
International audienceIn the supervised high dimensional settings with a large number of variables a...
International audienceIn the supervised high dimensional settings with a large number of variables a...
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...
AbstractBackgroundSupervised classification machine learning algorithms may have limitations when st...
International audienceIn the supervised high dimensional settings with a large number of variables a...
Partial least squares (PLS) regression is a dimension reduction method used in many areas of scienti...
[EN] N-PLS, as the natural extension of PLS to N-way structures, tries to maximize the covariance be...
[EN] N-PLS, as the natural extension of PLS to N-way structures, tries to maximize the covariance be...
Background Supervised classification machine learning algorithms may have limitations when studying...