@Solved Error caused by a blank column at the end of the file
I'm new to R just started today. I wrote a script to cluster data based on this person's code listed below. My problem is that when i output the data programatically R rejects the data saying
Error in kmeans(kdata, clust.level, iter.max = 50, nstart = 10) : more cluster centers than distinct data points. Execution halted
If I take the same input file and simply resave it without any modification in excel as tab delimited it parses correctly with output.
Edit: I found that for the programtically created file the dim(data.p) is 273 33 and 273 32 for the working file I also found that dim(kdata) is 0 32 for the broken file and 273 32 for the working file.
When I print datap i find that there is an extrea coloumn at the end of the file with all nas for the broken instance.
How do I fix this? Thanks
# add concatenation "%+%" <- function(x,y) paste(x,y,sep="") # initialize all necessary libraries library(cluster) library(psych) args <- commandArgs(trailingOnly = TRUE) print(args) # read tab delimted file - - convert to a matrix data1 <- read.table(file=args, sep='\t', header=T, row.names=1) data.p <- as.matrix(data1) kdata <- na.omit(data.p) #number of clusters clust.level <- as.integer(args) # Apply K-means cluster solutions fit <- kmeans(kdata, clust.level, iter.max=50, nstart=10) aggregate(kdata, by=list(fit$cluster), FUN=mean) clust.out <- fit$cluster kclust <- as.matrix(clust.out) kclust.out <- cbind(kclust) write.table(kclust.out, file=args%+%".kmeans", sep="\t") # end of script