# Principal component analysis in R with prcomp and by myself: different results

Where do I am wrong? I am trying to perform PCA through prcomp and by myself, and I get different results, can you please help me?

DOING IT BY MYSELF:

``````>database <- read.csv("E:/R/database.csv", sep=";", dec=",") #it's a 105 rows x 8 columns, each column is a variable
>matrix.cor<-cor(database)
>standardize<-function(x) {(x-mean(x))/sd(x)}
>values.standard<-apply(database, MARGIN=2, FUN=standardize)
>my.eigen<-eigen(matrix.cor)
>head (scores, n=10) # I m just posting here the first row scores for the first 6 pc

[,1]       [,2]       [,3]        [,4]       [,5]        [,6]

2.3342586  2.3426398 -0.9169527  0.80711713  1.1409138 -0.25832090

>sd <-sqrt (my.eigen\$values)
>sd

[1] 1.5586078 1.1577093 1.1168477 0.9562853 0.8793033 0.8094500 0.6574788
0.4560247
``````

DOING IT WITH PRCOMP:

``````>database.pca<-prcomp(database, retx=TRUE, center= TRUE, scale=TRUE)
>sd1<-database.pca\$sdev
>scores1<-database.pca\$x
PC1        PC2        PC3         PC4        PC5         PC6
-2.3342586  2.3426398  0.9169527  0.80711713  1.1409138  0.25832090
``````

Have a look at my question here: stats.stackexchange.com/q/30348/5443. The sign of each principal component is arbitrary. You can check that `abs(scores) == abs(scores1)` –  Marius Jan 29 '13 at 22:59
If you test your manually calculated scores with something like `range(abs(scores) - abs(scores1))` instead, you should get something pretty close to 0 (maybe not exactly 0, due to possible floating-point precision effects).