# Error in apply() : dim(X) must have a positive length

The below code gives an error. What causes the error and what can I do to solve it?

``````# Determine number of clusters
wss <- (nrow(donnees.test\$y - esvr1.pred) - 1) *
sum(apply(donnees.test\$y - esvr1.pred, 2, var))
for (i in 2:15) wss[i] <- sum(kmeans(donnees.test\$y - esvr1.pred,
centers=i)\$withinss)
plot(1:15, wss, type="b", xlab="Number of Clusters",
ylab="Within groups sum of squares")
# K-Means Cluster Analysis
fit <- kmeans(donnees.test\$y - esvr1.pred, 5) # 5 cluster solution
# get cluster means
aggregate(donnees.test\$y - esvr1.pred, by=list(fit\$cluster), FUN=mean)
# append cluster assignment
MainData <- data.frame(donnees.test\$y - esvr1.pred, fit\$cluster)
``````

The error :

``````Error in apply(donnees.test\$y - esvr1.pred, 2, var) :
dim(X) must have a positive length
``````
-
`donnees.test\$y-esvr1.pred` isn't a matrix, so it has no dimension attribute, just at the error message says. Why are you trying to calculate the variance of each individual element of a vector? – joran Jan 27 '14 at 19:43
So how can i calculate k-mean ? i searched for code and i saw this code just changed to mydata! – user3235052 Jan 27 '14 at 19:50
I fixed some of your formatting, but we don't know what `donness.test` or `esvr1.pred` are so the problem is not reproducible. – Brian Diggs Jan 27 '14 at 22:46
`kmeans` requires a matrix (or something that can be coerced to a matrix) as an input. You are not giving it a matrix. Because your code is not reproducible, I am voting to close. – Blue Magister Jan 27 '14 at 22:48