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 trying to do PCA on data frame with 5000 columns and 30 rows

Sample <- read.table(file.choose(), header=F,sep="\t")
Sample.scaled <- data.frame(apply(Sample,2,scale))
pca.Sample <- prcomp(Sample.scaled,retx=TRUE)`

Got the error

Error in svd(x, nu = 0) : infinite or missing values in 'x'

sum(is.na(Sample))
[1] 0

sum(is.na(Sample.scaled))
[1] 90

Tried to ignore all na values by using the following

pca.Sample <- prcomp(na.omit(Sample.scaled),retx=TRUE)

Which gives the following error

Error in svd(x, nu = 0) : 0 extent dimensions

There were reports that na.action requires formula to be given and hence tried the below

pca.Sample <- prcomp(~.,center=TRUE,scale=TRUE,Sample, na.action=na.omit)

Now getting the following error

Error in prcomp.default(x, ...) :
  cannot rescale a constant/zero column to unit variance

Think that the problem might be because "One of my data columns is constant. The variance of a constant is 0, and scaling would then divide by 0, which is impossible."

But not sure on how to tackle this. Any help much appreciated ....

share|improve this question
    
Try is.finite(Sample) instead of is.na. Also, you read in as a data.frame, convert to matrix and back to data.frame, are you sure that all your columns in Sample are numeric (or that R thinks they are). lapply(Sample, scale) may work better. –  mnel Nov 12 '12 at 23:02
    
Also note that ?prcomp already has a na.action= parameter which should be na.omit by default. –  thelatemail Nov 12 '12 at 23:09
    
@thelatemail : Thanks for formatting –  user329 Nov 13 '12 at 12:01

1 Answer 1

up vote 2 down vote accepted

Judging by the fact that sum(is.na(Sample.scaled)) comes out as 90, when sum(is.na(Sample)) was 0, it looks like you've got three constant columns.

Here's a randomly generated (reproducible) example, which gives the same error messages:

Sample <- matrix(rnorm(30 * 5000), 30)
Sample[, c(128, 256, 512)] <- 1

Sample <- data.frame(Sample)
Sample.scaled <- data.frame(apply(Sample, 2, scale))

> sum(is.na(Sample))
[1] 0

> sum(is.na(Sample.scaled))
[1] 90

# constant columns are "scaled" to NA.
> pca.Sample <- prcomp(Sample.scaled,retx=TRUE)
Error in svd(x, nu = 0) : infinite or missing values in 'x'

# 3 entire columns are entirely NA, so na.omit omits every row
> pca.Sample <- prcomp(na.omit(Sample.scaled),retx=TRUE)
Error in svd(x, nu = 0) : 0 extent dimensions

# can't scale the 3 constant columns
> pca.Sample <- prcomp(~.,center=TRUE,scale=TRUE,Sample, na.action=na.omit)
Error in prcomp.default(x, ...) : 
  cannot rescale a constant/zero column to unit variance

You could try something like:

Sample.scaled.2 <- data.frame(t(na.omit(t(Sample.scaled))))
pca.Sample.2 <- prcomp(Sample.scaled.2, retx=TRUE)

i.e. use na.omit on the transpose to get rid of the NA columns rather than rows.

share|improve this answer
    
Thanks @pete. It worked perfectly well –  user329 Nov 13 '12 at 12:00

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.