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PCA Eigenvectors
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Before writing this song, I had a hard time remembering what the Eigenvectors were in PCA. Now I'll never forget.
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If you'd like to support StatQuest, please consider...
...or...
...buying my book, a study guide, a t-shirt or hoodie, or a song from the StatQuest store...
...or just donating to StatQuest!
Lastly, if you want to keep up with me as I research and create new StatQuests, follow me on twitter:
#StatQuest
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