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A variant of sparse partial least squares for variable selection and data exploration
2014
Frontiers in Neuroinformatics
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
doi:10.3389/fninf.2014.00018
pmid:24624079
pmcid:PMC3939647
fatcat:zhoza6nje5hmrixfmvfbzlf4vm