Generalization can be defined quantitatively and can be used to assess the
performance of principal component analysis (PCA). The generalizability of
PCA depends on the number of principal components retained in the analysis.
We provide analytic and test set estimates of generalization. We show how
the generalization error can be used to select the number of principal comp
onents in two analyses of functional magnetic resonance imaging activation
sets. (C) 1999 Academic Press.