Analysis of data containing a vast number of features, but only a limited number of informative ones, requires methods that can separate true signal from noise variables. One class of methods attempting this is the sparse partial least squares methods for regression (sparse PLS). This paper aims at improving the theoretical foundation, speed and robustness of such methods. A general justification of truncation of PLS loading weights is achieved through distribution theory and the central limit theorem. We also introduce a quick plug-in based truncation procedure based on a novel application of theory intended for analysis of variance for experiments without replicates. The result is a versatile and intuitive method that performs component-w...
Recent developments in technology enable collecting a large amount of data from various sources. Mor...
In this paper, we investigate the objective function and deflation process for sparse Partial Least ...
International audienceIn the supervised high dimensional settings with a large number of variables a...
Analysis of data containing a vast number of features, but only a limited number of informative ones...
In the supervised high dimensional settings with a large number of variables and a low number of ind...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
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...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
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...
Abstract Partial least squares (PLS) regression combines dimensionality reduction and prediction usi...
Abstract: Partial least squares (PLS) regression combines dimensionality reduction and prediction us...
Recent developments in technology enable collecting a large amount of data from various sources. Mor...
In this paper, we investigate the objective function and deflation process for sparse Partial Least ...
International audienceIn the supervised high dimensional settings with a large number of variables a...
Analysis of data containing a vast number of features, but only a limited number of informative ones...
In the supervised high dimensional settings with a large number of variables and a low number of ind...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
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...
Partial least squares (PLS) is a class of statistical methods for multivariate data analysis. In the...
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...
Abstract Partial least squares (PLS) regression combines dimensionality reduction and prediction usi...
Abstract: Partial least squares (PLS) regression combines dimensionality reduction and prediction us...
Recent developments in technology enable collecting a large amount of data from various sources. Mor...
In this paper, we investigate the objective function and deflation process for sparse Partial Least ...
International audienceIn the supervised high dimensional settings with a large number of variables a...