Rdimtools-package | Dimension Reduction and Estimation Methods |
aux.gensamples | Generate model-based samples |
aux.graphnbd | Find nearest neighborhood |
aux.kernelcov | Build a centered kernel matrix K |
aux.pkgstat | Show the number of functions for 'Rdimtools'. |
aux.preprocess | Centering, decorrelating, or whitening of the data |
aux.shortestpath | Find shortest path using Floyd-Warshall algorithm |
do.cca | Canonical Correlation Analysis |
do.cisomap | Conformal Isometric Feature Mapping |
do.dm | Diffusion Maps |
do.fa | Exploratory Factor Analysis |
do.ica | Independent Component Analysis |
do.isomap | Isometric Feature Mapping |
do.keca | Kernel Entropy Component Analysis |
do.kpca | Kernel Principal Component Analysis |
do.lapeig | Laplacian Eigenmaps |
do.lda | Linear Discriminant Analysis |
do.lisomap | Landmark Isometric Feature Mapping |
do.lle | Locally-Linear Embedding |
do.lmds | Landmark Multidimensional Scaling |
do.lpp | Locality Preserving Projections |
do.ltsa | Local Tangent Space Alignment |
do.mds | (Classical) Multidimensional Scaling |
do.mvu | Maximum Variance Unfolding / Semidefinite Embedding |
do.npe | Neighborhood Preserving Embedding |
do.olpp | Orthogonal Locality Preserving Projection |
do.opls | Orthogonal Partial Least Squares |
do.pca | Principal Component Analysis |
do.plp | Piecewise Laplacian-based Projection (PLP) |
do.pls | Partial Least Squares |
do.ree | Robust Euclidean Embedding |
do.rndproj | Random Projection |
do.sammon | Sammon Mapping |
do.sde | Maximum Variance Unfolding / Semidefinite Embedding |
do.sne | Stochastic Neighbor Embedding |
do.tsne | t-distributed Stochastic Neighbor Embedding |
est.boxcount | Box-counting dimension |
est.correlation | Correlation Dimension |
Rdimtools | Dimension Reduction and Estimation Methods |