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I am trying to do PCA with R.

My Data has 10,000 columns and 90 rows I used the prcomp function to do PCA. Trying to prepare a biplot with the prcomp results, I ran into the problem that the 10,000 plotted vectors cover my datapoints. Is there any option for the biplot to hide the vectors' representation?

OR

I can use plot to get the PCA results. But I am not sure how to label these points according to my datapoints, which are numbered 1 to 90.

Sample<-read.table(file.choose(),header=F,sep="\t")

Sample.scaled<-data.frame(apply(Sample_2XY,2,scale))

Sample_scaled.2<-data.frame(t(na.omit(t(Sample_2XY.scaled))))

pca.Sample<-prcomp(Sample_2XY.scaled.2,retx=TRUE)

pdf("Sample_plot.pdf")

plot(pca.Sample$x)

dev.off()
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1 Answer

up vote 6 down vote accepted

If you do a help(prcomp) or ?prcomp, the help file tells us all the things contained in the prcomp() object returned by the function. We just need to pick which things we want to plot and do it with some function that gives us more control than biplot().

A more general trick for cases when the help file doesn't clarify things is to do a str() on the prcomp object (in your case pca.Sample) to see all its parts and find what we want ( str() compactly displays the internal structure of an R object. )

Here is an example with some of R's sample data:

# do a pca of arrests in different states
p<-prcomp(USArrests, scale = TRUE) 

str(p) gives me something ugly and too long to include, but I can see that p$x has the states as rownames and their locations on the principal components as columns. Armed with this, we can plot it any way we want, such as with plot() and text() (for labels):

# plot and add labels
plot(p$x[,1],p$x[,2])
text(p$x[,1],p$x[,2],labels=rownames(p$x))

If we are making a scatterplot with many observations, the labels may not be readable. We therefore might want to only label more extreme values, which we can identify with quantile():

#make a new dataframe with the info from p we want to plot
df <- data.frame(PC1=p$x[,1],PC2=p$x[,2],labels=rownames(p$x))

#make sure labels are not factors, so we can easily reassign them
df$labels <- as.character(df$labels)

# use quantile() to identify which ones are within 25-75 percentile on both
# PC and blank their labels out
df[ df$PC1 > quantile(df$PC1)["25%"] & 
    df$PC1 < quantile(df$PC1)["75%"] &
    df$PC2 > quantile(df$PC2)["25%"] &
    df$PC2 < quantile(df$PC2)["75%"],]$labels <- ""

# plot
plot(df$PC1,df$PC2)
text(df$PC1,df$PC2,labels=df$labels)
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Thanks for reply. But in my case rownames(pca.Sample$x) gives result as NULL. where as rownames(Sample) gives numbers from 1 to 90. Is there is way I can get the same row numbers to pca.Sample$x –  user329 Nov 13 '12 at 22:42
    
Can you str(pca.Sample) and add the result to your question? Are you attempting to reduce the 90 dimensions to a smaller number in which 10,000 observations occur or reduce the 10,000 dimensions to a smaller number in which 90 observations occur? –  MattBagg Nov 13 '12 at 23:02
    
I donot understand your question much. I am very new to R. However here is the result of str(pca.Sample) which you had asked for.To be more precise I have 90 rows and 9912 columns.str(pca.Sample)List of 5 $ sdev : num [1:90] 87.21 38.37 12.26 8.79 6.2 ... $ rotation: num [1:9912, 1:90] 0.01135 -0.0108 -0.00551 -0.00868 -0.0099 ... ..- attr(*, "dimnames")=List of 2 .. ..$ : chr [1:9912] "V1" "V2" "V3" "V4" ... .. ..$ : chr [1:90] "PC1" "PC2" "PC3" "PC4" ... $ center : Named num [1:9912] 4.56e-17 4.16e-18 -9.49e-17 -6.03e-17 5.09e-17 ... –  user329 Nov 13 '12 at 23:09
    
Rest of the lines here in this comment $ scale : logi FALSE $ x : num [1:90, 1:90] -78.8 88.2 -61.6 87.3 -62.1 ... ..- attr(*, "dimnames")=List of 2 .. ..$ : NULL .. ..$ : chr [1:90] "PC1" "PC2" "PC3" "PC4" ... - attr(*, "class")= chr "prcomp" –  user329 Nov 13 '12 at 23:11
    
I meant edit your question and add the str() result there where you have no space limit. :-) The way you are doing the PCA, you seeing how your 90 rows could be represented as a smaller number of rows (principal components), while maintaining the 9912 columns. Is that what you want? Looks like you don't have rownames in pca.Sample$x, but names stay in order, so you could use rownames(p$rotation) –  MattBagg Nov 13 '12 at 23:27
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