auroc | Area Under the Curve (AUC) and Receiver Operating... |
background.predict | Calculate prediction areas |
block.pls | N-integration with Projection to Latent Structures models... |
block.plsda | N-integration with Projection to Latent Structures models... |
block.spls | N-integration and feature selection with sparse Projection to... |
block.splsda | N-integration and feature selection with Projection to Latent... |
cim | Clustered Image Maps (CIMs) ("heat maps") |
cimDiablo | Clustered Image Maps (CIMs) ("heat maps") for DIABLO |
circosPlot | circosPlot for DIABLO |
color.jet | Color Palette for mixOmics |
color.mixo | #E69F00', # shiny orange #56B4E9' #Shiny blue |
explained_variance | Calculation of explained variance |
get.confusion_matrix | Create confusion table and calculate the Balanced Error Rate |
imgCor | Image Maps of Correlation Matrices between two Data Sets |
ipca | Independent Principal Component Analysis |
logratio.transfo | Log-ratio transformation |
map | Classification given Probabilities |
mat.rank | Matrix Rank |
mint.block.pls | NP-integration |
mint.block.plsda | NP-integration with Discriminant Analysis |
mint.block.spls | NP-integration for integration with variable selection |
mint.block.splsda | NP-integration with Discriminant Analysis and variable... |
mint.pca | P-integration with Principal Component Analysis |
mint.pls | P-integration |
mint.plsda | P-integration with Projection to Latent Structures models... |
mint.spls | P-integration with variable selection |
mint.splsda | P-integration with Discriminant Analysis and variable... |
mixOmics | PLS-derived methods: one function to rule them all! |
nearZeroVar | Identification of zero- or near-zero variance predictors |
network | Relevance Network for (r)CCA and (s)PLS regression |
nipals | Non-linear Iterative Partial Least Squares (NIPALS) algorithm |
pca | Principal Components Analysis |
perf | Compute evaluation criteria for PLS, sPLS, PLS-DA, sPLS-DA,... |
perf.mint.spls | Predict Method for (mint).(block).(s)pls(da) methods |
plot | plot methods for mixOmics |
plotArrow | Arrow sample plot |
plotIndiv | Plot of Individuals (Experimental Units) |
plotIndiv.mixo_pls | PLS sample plot methods |
plotLoadings | Plot of Loading vectors |
plot.rcc | Canonical Correlations Plot |
plot.sgccda | Graphical output for the DIABLO framework |
plotVar | Plot of Variables |
pls | Partial Least Squares (PLS) Regression |
plsda | Partial Least Squares Discriminant Analysis (PLS-DA). |
print.mixo_pls | Print Methods for CCA, (s)PLS, PCA and Summary objects |
rcc | Regularized Canonical Correlation Analysis |
selectVar | Output of selected variables |
sipca | Independent Principal Component Analysis |
spca | Sparse Principal Components Analysis |
spls | Sparse Partial Least Squares (sPLS) |
splsda | Sparse Partial Least Squares Discriminant Analysis (sPLS-DA) |
study_split | divides a data matrix in a list of matrices defined by a... |
summary.mixo_pls | Summary Methods for CCA and PLS objects |
tune | Generic function to choose the parameters in the different... |
tune.block.splsda | Tuning function for block.splsda method (N-integration with... |
tune.mint.splsda | Estimate the parameters of mint.splsda method |
tune.pca | Tune the number of principal components in PCA |
tune.rcc | Estimate the parameters of regularization for Regularized CCA |
tune.spls | Tuning functions for sPLS method |
tune.splsda | Tuning functions for sPLS-DA method |
tune.splslevel | Tuning functions for multilevel sPLS method |
unmap | Dummy matrix for an outcome factor |
vip | Variable Importance in the Projection (VIP) |
withinVariation | Within matrix decomposition for repeated measurements... |
wrapper.rgcca | mixOmics wrapper for Regularised Generalised Canonical... |
wrapper.sgcca | mixOmics wrapper for Sparse Generalised Canonical Correlation... |
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