For PCA using the eigenvectors of the covariance matrix, what is the meaning of the eigenvalues?

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When doing a PCA using the largest eigenvectors associated with the largest eigenvalues, what does the values of the eigenvalues means?
Example:
The 2 largest eigenvectors of my dataset are these:
1 - [ 6.62257875e-01 -1.63390189e-01 7.31243512e-01 -1.13386505e-04 -9.65364160e-05 1.02781966e-03]
2 - [ 3.31219165e-01 -8.11563370e-01 -4.81309165e-01 4.26282496e-04 3.70709031e-05 2.55801611e-04]
How can I associate these values with the large dispersion of the data in a plot?
  4 comentarios
caio amorim
caio amorim el 29 de Mayo de 2020
well, thank you for not being direct. not answering would be better
John D'Errico
John D'Errico el 30 de Mayo de 2020
Editada: John D'Errico el 30 de Mayo de 2020
Rather demanding are you? Sorry, but yours is not even a question about MATLAB. I gave you a link that explains PCA. Do you expect us to teach a statistics course in this forum? I'll give you an entire textbook on the subject. I've seen courses taught.
Do some reading.

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