In PCA, the Eigenvectors are also known as the ________ of the data.
- components
- directions
- eigendata
- principal directions
In PCA, the Eigenvectors, also known as the "principal directions," define the directions in which the data varies the most. They form the axes of the new feature space and capture the essential structure of the data.
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