I would like to determine k-number of cluster but I couldn't use the NbClust function because my dataset is too big.

I found an article on-line regarding to K-Means clustering http://www.r-bloggers.com/k-means-clustering-from-r-in-action/. I tried to run the function in the article, but I got the below error message.

Does anyone has solutions for either NbClust function or the function stated in the article?

```
> wssplot <- function(m, nc=15, seed=1234){
+ wss <- (nrow(data)-1)*sum(apply(data,2,var))
+ for (i in 2:nc){
+ set.seed(seed)
+ wss[i] <- sum(kmeans(data, centers=i)$withinss)}
+ plot(1:nc, wss, type="b", xlab="Number of Clusters",
+ ylab="Within groups sum of squares")}
> wssplot(m3)
Error in apply(data, 2, var) : dim(X) must have a positive length
> nc <- NbClust(m3, min.nc=2, max.nc=20, method="kmeans")
Error: cannot allocate vector of size 447.3 Mb
In addition: Warning messages:
1: In is.factor(x) :
Reached total allocation of 8139Mb: see help(memory.size)
2: In is.factor(x) :
```

`data`

and then uses that in the function's code. You pass an argument`m`

and then use`data`

in the function's code. I'm surprised it runs at all. – jlhoward May 10 at 17:26