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# kmeans classification to predetermined centroids

I am trying to assign datapoints (through euclidean distance) to a known, predefined, set of center points, assigning points to the fixed center point that is closest.

I have the feeling that i am probably overcomplicating / missing something basic, but i have tried to do this with a kmeans implementation with predetermined centers and no iterations. However, as per code below, and probably because the algo will do one iteration, this fails to work (cl\$centers have "moved" and are not equal to the original centroids)

Is there another, simple way of assigning the points in matrix X to the nearest centers?

``````x <- rbind(matrix(rnorm(100, sd = 0.3), ncol = 2), matrix(rnorm(100, mean = 1, sd = 0.3), ncol = 2))
colnames(x) <- c("x", "y")

vector=c(0.25,0.5,0.75,1)
ccenters <- as.matrix(cbind(vector,vector))
colnames(ccenters) <- c("x", "y")
ccenters

(cl <- kmeans(x, centers=ccenters,iter.max=1))
plot(x, col = cl\$cluster)
points(cl\$centers, col = 1:4, pch = 8, cex = 2)
cl\$centers
cl\$centers==ccenters
``````
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You can directly compute the distances between each point and each center and look at the nearest center.

``````# All the distances (you could also use a loop)
distances <- outer(
1:nrow(x),
1:nrow(ccenters),
Vectorize( function(i,j) {
sum( (x[i,] - ccenters[j,])^2 )
} )
)

# Find the nearest cluster
clusters <- apply( distances, 1, which.min )

# Plot
plot( x, col=clusters, pch=15 )
segments( ccenters[clusters,1], ccenters[clusters,2], x[,1], x[,2], col=clusters )
``````
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