riem.scSM: Spectral Clustering by Shi and Malik (2000) In Riemann: Learning with Data on Riemannian Manifolds

 riem.scSM R Documentation

Spectral Clustering by Shi and Malik (2000)

Description

The version of Shi and Malik first constructs the affinity matrix

A_{ij} = \exp(-d(x_i, d_j)^2 / σ^2)

where σ is a common bandwidth parameter and performs k-means clustering on the row-space of eigenvectors for the random-walk graph laplacian matrix

L=D^{-1}(D-A)

.

Usage

riem.scSM(riemobj, k = 2, sigma = 1, geometry = c("intrinsic", "extrinsic"))


Arguments

 riemobj a S3 "riemdata" class for N manifold-valued data. k the number of clusters (default: 2). sigma bandwidth parameter (default: 1). geometry (case-insensitive) name of geometry; either geodesic ("intrinsic") or embedded ("extrinsic") geometry.

Value

a named list containing

cluster

a length-N vector of class labels (from 1:k).

eigval

eigenvalues of the graph laplacian's spectral decomposition.

embeds

an (N\times k) low-dimensional embedding.

References

Shi J, Malik J (2000). “Normalized Cuts and Image Segmentation." IEEE Transactions on Pattern Analysis and Machine Intelligence, 22(8):888–905.

Examples

#-------------------------------------------------------------------
#          Example on Sphere : a dataset with three types
#
# class 1 : 10 perturbed data points near (1,0,0) on S^2 in R^3
# class 2 : 10 perturbed data points near (0,1,0) on S^2 in R^3
# class 3 : 10 perturbed data points near (0,0,1) on S^2 in R^3
#-------------------------------------------------------------------
## GENERATE DATA
mydata = list()
for (i in 1:10){
tgt = c(1, stats::rnorm(2, sd=0.1))
mydata[[i]] = tgt/sqrt(sum(tgt^2))
}
for (i in 11:20){
tgt = c(rnorm(1,sd=0.1),1,rnorm(1,sd=0.1))
mydata[[i]] = tgt/sqrt(sum(tgt^2))
}
for (i in 21:30){
tgt = c(stats::rnorm(2, sd=0.1), 1)
mydata[[i]] = tgt/sqrt(sum(tgt^2))
}
myriem = wrap.sphere(mydata)
lab    = rep(c(1,2,3), each=10)

## CLUSTERING WITH DIFFERENT K VALUES
cl2 = riem.scSM(myriem, k=2)$cluster cl3 = riem.scSM(myriem, k=3)$cluster
cl4 = riem.scSM(myriem, k=4)$cluster ## MDS FOR VISUALIZATION mds2d = riem.mds(myriem, ndim=2)$embed

## VISUALIZE