| sgPLS-package | Group and Sparse Group Partial Least Square Model |
| gPLS | Group Partial Least Squares (gPLS) |
| lambda.quadra | Internal Functions |
| normv | Internal Functions |
| per.variance | Percentage of variance of the Y matrix explained by the score-vectors obtained by PLS approaches |
| perf | Compute evaluation criteria for PLS, sPLS, PLS-DA and sPLS-DA |
| perf.gPLS | Compute evaluation criteria for PLS, sPLS, PLS-DA and sPLS-DA |
| perf.sgPLS | Compute evaluation criteria for PLS, sPLS, PLS-DA and sPLS-DA |
| perf.sPLS | Compute evaluation criteria for PLS, sPLS, PLS-DA and sPLS-DA |
| plotcim | Plots a cluster image mapping of correlations between outcomes and all predictors |
| predict.gPLS | Predict Method for sPLS, gPLS or sgPLS |
| predict.sgPLS | Predict Method for sPLS, gPLS or sgPLS |
| predict.sPLS | Predict Method for sPLS, gPLS or sgPLS |
| select.sgpls | Output of selected variables from a gPLS model or a sgPLS model |
| select.spls | Output of selected variables from a sPLS model |
| sgPLS | Sparse Group Partial Least Squares (sgPLS) |
| soft.thresholding | Internal Functions |
| soft.thresholding.group | Internal Functions |
| soft.thresholding.sparse.group | Internal Functions |
| sPLS | Sparse Partial Least Squares (sPLS) |
| step1.group.spls.sparsity | Internal Functions |
| step1.sparse.group.spls.sparsity | Internal Functions |
| step1.spls.sparsity | Internal Functions |
| step2.spls | Internal Functions |
| tuning.gPLS.X | Choice of the tuning parameter (number of groups) related to predictor matrix for gPLS model (regression mode) |
| tuning.sgPLS.X | Choice of the tuning parameters (number of groups and mixing parameter) related to predictor matrix for sgPLS model (regression mode) |
| tuning.sPLS.X | Choice of the tuning parameter (number of variables) related to predictor matrix for sPLS model (regression mode) |