Correlation of Principal Component Scores after Varimax Rotation
5 views (last 30 days)
Show older comments
Hi all:
I'm extracting principal components from time series data and use the varimax rotation to interpret the PCs. In addition, I'd like to compute the rotated scores and use them for further analysis. However, the rotated scores are not uncorrelated anymore, although they should (I think) because the rotation matrix is orthornomal.
Here's a simple example in which I pick two PCs:
load hald [C,S] = pca(zscore(ingredients));
[L,T] = rotatefactors(C(:,1:2)); % L = C(:,1:2)*T
cov(S(:,1:2)*T)
Can anybody help?
Peter
0 Comments
Answers (1)
Ayush Aniket
on 29 Aug 2025
PCA scores are uncorrelated because they come from the eigen-decomposition of the covariance matrix. When you rotate the loadings (e.g. varimax), the rotation matrix is orthogonal, so the axes remain orthogonal, but the scores no longer stay uncorrelated. This is expected as rotation trades uncorrelated scores for more interpretable loadings.
Hence, if you need uncorrelated variables, use the original PC scores, and if you need interpretability, use the rotated ones (and accept correlation).
0 Comments
See Also
Categories
Find more on Dimensionality Reduction and Feature Extraction in Help Center and File Exchange
Products
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!