# Clustering points on a scatterplot using standard dev

This is probably an extremely simple question, but I haven't found a solution on my own yet. I want to create a scatterplot using random points selected by 'sample'. I also want to group these points into randomly distributed point clusters of a certain size (say 10). I'm trying to do so using a standard deviation, but I haven't found the right method of doing so.

I have the following code so far:

``````max<-1000
MA1<- matrix(0, ncol = 500, nrow = 500)
x<-sample(1:max,50,replace = TRUE) + rnorm(length(20),sd=0.5)
y<- sample(1:max,50,replace = TRUE) + rnorm(length(20),sd=0.5)

plot(x,y, col = 2)`
``````

How can I fix this?

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I think you should start by educating yourself about clustering algorithms implemented in R. –  Roland Nov 19 '13 at 18:33
I agree w/ @Roland, what you need first is to understand the ideas behind clustering so that you know what you can do, how you'd do it, & why you'd want to. I'm not sure the R task view for clustering will be the most user-friendly place to start, though. Jain has put his old clustering text on line for free (pdf); that might be a better place to start. –  gung Nov 19 '13 at 18:47
@gung That is a pretty slow download (it's a 39 MB PDF). –  Roland Nov 19 '13 at 18:51
I dunno, @Roland, maybe it's my connection; it downloads in about 2 seconds here. –  gung Nov 19 '13 at 18:56
I am not trying to conduct any statistical analysis, I am only trying to group the points together. Perhaps I am not looking at it right. –  Mengll Nov 19 '13 at 19:07

You are looking for equal-size clustering. There are algos that try to answer this question, but the problem is that forcing equal sizes can result in a "not spatially cohesive" solution.

Consider the following case with n=4: X={−1,0.99,1,1.01}. If you want 2 clusters, you get either different sizes or not "spatially cohesive".

If you can live with clusters of variable size, this would work:

``````set.seed=2
max<-1000
x<-sample(1:max,50,replace = TRUE) + rnorm(length(20),sd=0.5)
y<- sample(1:max,50,replace = TRUE) + rnorm(length(20),sd=0.5)

mat <-cbind(x,y)
fit <-kmeans(mat,5) #five clusters, ~= 10 per cluster if n=50
plot(mat, col=fit\$cluster, pch=16)
``````

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This is exactly what I need, thank you! This is much better than what I ended up using. –  Mengll Nov 29 '13 at 14:57