I have looked for such a long time, and haven't been able to figure out how to run Principal Component Analysis in R with the csv file I have. I continue to get this error:

Error in cov.wt(z) : 'x' must contain finite values only

all I have so far is

data <- read.csv("2014 07 24 Pct Chg Variables.csv")
pca <- princomp(data3, cor=T)

Error in cov.wt(z) : 'x' must contain finite values only

I have some "" in my csv file, and have tried

data2 <- apply(data, 1, f1)
data3 <- as.numeric(data2)

where f1 is a function to apply the mean where the value is a blank.

3 Answers 3


princomp.default cannot deal with NA values:

USArrests[3,2] <- NA

princomp(USArrests, cor = TRUE)
#Error in cov.wt(z) : 'x' must contain finite values only

You need to handle NAs:

princomp(na.omit(USArrests), cor = TRUE)

Or use princomp.formula:

princomp(~ ., data = USArrests, cor = TRUE)
#works too (by calling na.omit` per default)

The first column was date.. once I tried

pca <- princomp(data[2:21], cor=T)

it worked.

  • So it was an error in the PCA function not recognizing the date format? And removing the columns of dates led or proper operation of the PCA function?
    – DirtStats
    Jul 3, 2016 at 18:55

Make sure you only send the numeric part of the matrix.

data=read.csv("file.csv", sep="[if not sep by comma]", header=TRUE)      
#Calculate number of rows and col
#Remove header and save each column to a matrix
for ( i in 1:rows){
   for ( j in 1:cols){
pca_a=princomp(data, cor=True, covmat=NULL, scores=TRUE)
#Print scree plot
#plot pca
#plot scores with labels
plot(pca_a$loadings[,1:2],type="n", main="Title", sub="A subtitle")

That should help. This way you can change all NA or other things to 0. You could also remove rows that have Strings if there aren't many.

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