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PCA problem in R

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[SNIP]
Just yesterday I subscribed to r-help because I am planning
on learning the basics of R ... today.   :-)
Thus, I am not sure about the history of this question.

The above situation, more variables than samples, 
is commonly encounterd in the climate studies.
Consider annual mean temperatures for 195 years
on a coarse 72 [lat] x 144 [lon]  grid [72*144=10368 
spatial variables]. 

Let  S be the number of grid points and T be the number
of years. I think there is a theorem (?Eckart-Young?) 
which states that the maximum number of unique eigenvalues 
is min(S,T). In your case 195 eigenvalues is correct. 
I speculate that the underlying function transposes the 
input data matrix and computes the the TxT [rather than SxS]
covariance matrix and solves for the eigenvalues/vectors. 
It then uses a linear transformation to get the results
for the original input data matrix.

Computationally, the above is much faster and uses less memory.