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I want to voronoi diagrams in R. I have a set of points in N-dimensions(say 10). I dont want to use multi dimensional scaling(MDS). I want voronoi diagrams to be plotted using non metric measures. Is there any package which has this implementation? If not, then can you suggest me a suitable way to plot the tessellations using these N-dimensional co-ordinates.

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What have you tried? I tried this library('sos');findFn('voronoi'); you find at least 5 or 6 manners to do this. – agstudy Feb 6 '13 at 13:31
did you google, voronoi diagrams in R? Is the first google hit: "package geometry" useful or not? Help us not travel the same ground you have already covered. If you have covered any. – user1317221_G Feb 6 '13 at 13:32
Do you want to map points to your visualization space (2D or 3D) and tessellate there, or do you want to tessellate in all 10 dimensions and visualize that? The latter will be far more difficult, I guess. For the former, PCA comes to my mind. – MvG Feb 6 '13 at 13:33
I want to plot it in 2D only. I dont want to use sammons or any other multidimensional scaling approaches as I will lose information. – dp758 Feb 6 '13 at 13:47
You cannot map ten continuous dimensions to two without loosing information. You can only influence what information you preserve and what you loose. – MvG Feb 6 '13 at 13:49
up vote 2 down vote accepted

It is not clear whether your problem is the dimension reduction or plotting the tessellation: the problems are separate. As suggested in the comments, you can use


to find where the functions you need are.

# Sample data: a distance matrix
d <- dist( matrix( rnorm(200), nc=10 ) )

# Dimension reduction, via non-metric multidimensional scaling
r <- sammon( d )

# Plot the Voronoi tessellation
x <- r$points
plot( voronoi.mosaic(x[,1], x[,2]) )
points(x, pch=13)

Besides principal component analysis (prcomp) and multidimensional scaling (MASS::isoMDS, MASS:sammon), you can also look at isomap (vegan::isomap), local linear embedding (lle::lle), maximum variance unfolding or T-distributed stochastic neighbor embedding (tsne::tsne): since some of those (Isomap, LLE, MVU) are based on the "neighbourhood graph", which is not unlike the 2-dimensional tessellation you seek, they may be more meaningful for your problem.

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No. I dont want dimension reduction using multidimension scaling. I want using non metric distances such as convex distances. – dp758 Feb 6 '13 at 14:24
I have edited my answer: you can use, for instance, sammon instead of isoMDS, for non-metric multidimensional scaling. – Vincent Zoonekynd Feb 6 '13 at 14:29
sammon's projection is also multidimensional scaling. But I will look into the various other projections which you have told. Thanks a lot – dp758 Feb 6 '13 at 15:28

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