# Function and data format for doing vector-based clustering in R

I need to run clustering on the correlations of data row vectors, that is, instead of using individual variables as clustering predictor variables, I intend to use the correlations between the vector of variables between data rows.

Is there a function in R that does vector-based clustering. If not and I need to do it manually, what is the right data format to feed in a function such as cmeans or kmeans? Say, I have m variables and n data rows, the m variables constitute one vector for each data row. so I have a n X n matrix for correlation or cosine. Can this matrix be plugged in the clustering function directly or certain processing is required?

Many thanks.

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You could get started with `?kmeans` and `example(kmeans)`. Also, cran.r-project.org/web/views/Cluster.html –  bdemarest Mar 7 '12 at 19:12

You can transform your correlation matrix into a dissimilarity matrix, for instance `1-cor(x)` (or `2-cor(x)` or `1-abs(cor(x))`).

``````# Sample data
n <- 200
k <- 10
x <- matrix( rnorm(n*k), nr=k )
x <- x * row(x) # 10 dimensions, with less information in some of them

# Clustering
library(cluster)
r <- pam(1-cor(x), diss=TRUE, k=5)

# Check the results
plot(prcomp(t(x))\$x[,1:2], col=r\$clustering, pch=16, cex=3)
``````
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There are a dozen of extensions and alternatives available in the community around R. There are PAM, CLARA and CLARANS for example. They aren't exactly k-means, but closely related. There should be a "spherical k-means" somewhere, that is sensible for cosine distance. There is the whole family of hierarchical clusterings (which scale rather badly - usually `O(n^3)`, with `O(n^2)` in a few exceptions - but are very easy to understand conceptually).