質問

I have a 800x800 singular (covariance) matrix and I want to find it's largest eigenvalue and eigenvector corresponding to this eigenvalue. Does anybody know wheter it is possible to do it with R?

役に立ちましたか?

解決

Here is an example of using svd for the decomposition of a covariance matrix:

a <- matrix(runif(16),4)
C <- cov(a)
res <- svd(C)
res
res$d[1] # largest singular value
res$u[,1] # largest vector ; u and v are the same

Hope that helps.

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