Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am using the function prediction.strength in the r Package fpc with k-medoids algorithms. here is my code

prediction.strength(data,2,6,M=10,clustermethod=pamkCBI,DIST,krange=2:6,diss=TRUE,usepam=TRUE)

somehow I get the error message

Error in switch(method, kmeans = kmeans(xdata[indvec[[l]][[i]], ], k,  : 
EXPR must be a length 1 vector

Does anybody have experience with this r command? There are simple examples like

iriss <- iris[sample(150,20),-5]
prediction.strength(iriss,2,3,M=3,method="pam")

but my problem is that I am using dissimilarity matrix instead of the data itself for the k-medoids algorithms. I don't know how should I correct my code in this case.

share|improve this question
    
I ran the sample code from the question on my desktop computer after editing your question and it is still running. Does this package always take this long? –  Stedy Apr 10 '13 at 20:53

1 Answer 1

Please note that in the package help the following is stated for the prediction.strength:

xdats - data (something that can be coerced into a matrix). Note that this can currently not be a dissimilarity matrix.

I'm afraid you'll have to hack the function to get it to handle a distance matrix. I'm using the following:

pred <- function (distance, Gmin = 2, Gmax = 10, M = 50, 
classification = "centroid", cutoff = 0.8, nnk = 1, ...) 
{
require(cluster)
require(class)
xdata <- as.matrix(distance)
n <- nrow(xdata)
nf <- c(floor(n/2), n - floor(n/2))
indvec <- clcenters <- clusterings <- jclusterings <- classifications <- list()
prederr <- list()
dist <- as.matrix(distance)
for (k in Gmin:Gmax) {
    prederr[[k]] <- numeric(0)
    for (l in 1:M) {
        nperm <- sample(n, n)
        indvec[[l]] <- list()
        indvec[[l]][[1]] <- nperm[1:nf[1]]
        indvec[[l]][[2]] <- nperm[(nf[1] + 1):n]
        for (i in 1:2) {
            clusterings[[i]] <- as.vector(pam(as.dist(dist[indvec[[l]][[i]],indvec[[l]][[i]]]), k, diss=TRUE))
            jclusterings[[i]] <- rep(-1, n)
            jclusterings[[i]][indvec[[l]][[i]]] <- clusterings[[i]]$clustering
    centroids <- clusterings[[i]]$medoids
            j <- 3 - i
            classifications[[j]] <- classifdist(as.dist(dist), jclusterings[[i]], 
              method = classification, centroids = centroids, 
              nnk = nnk)[indvec[[l]][[j]]]
        }
        ps <- matrix(0, nrow = 2, ncol = k)
        for (i in 1:2) {
            for (kk in 1:k) {
              nik <- sum(clusterings[[i]]$clustering == kk)
              if (nik > 1) {
                for (j1 in (1:(nf[i] - 1))[clusterings[[i]]$clustering[1:(nf[i] - 
                  1)] == kk]) {
                  for (j2 in (j1 + 1):nf[i]) if (clusterings[[i]]$clustering[j2] == 
                    kk) 
                    ps[i, kk] <- ps[i, kk] + (classifications[[i]][j1] == 
                      classifications[[i]][j2])
                }
                ps[i, kk] <- 2 * ps[i, kk]/(nik * (nik - 
                  1))
              }
            }
        }
        prederr[[k]][l] <- mean(c(min(ps[1, ]), min(ps[2, 
            ])))
    }
}
mean.pred <- numeric(0)
if (Gmin > 1) 
    mean.pred <- c(1)
if (Gmin > 2) 
    mean.pred <- c(mean.pred, rep(NA, Gmin - 2))
for (k in Gmin:Gmax) mean.pred <- c(mean.pred, mean(prederr[[k]]))
optimalk <- max(which(mean.pred > cutoff))
out <- list(predcorr = prederr, mean.pred = mean.pred, optimalk = optimalk, 
    cutoff = cutoff, method = clusterings[[1]]$clustermethod, 
    Gmax = Gmax, M = M)
class(out) <- "predstr"
out
}
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.