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[WIP] Explained Variance #1037
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[WIP] Explained Variance #1037
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@naresh-bachwani prototype version: |
Hey there @bbengfort,
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Questions: Is 85% variance some kind of magical number similar to p=0.05, or "rule of thumb" correlation coefficients or effect size? Below is an example on some of the expected magic numbers in "rule of thumb" tables:
Reference: https://archive.fo/Bi6yF https://archive.fo/ourlZ https://archive.fo/hVKdt https://archive.fo/jQOX8 https://archive.fo/Xh9xk |
@BrandonKMLee - yes, exactly right, it's just a rule of thumb about how many components are needed to have a "very strong" correlation or "enough explained variance" similar to the table you provided or a p value of 0.05. |
@bbengfort Thanks for the issue mention. Looking at the above plot (which is pretty good) I would mention a few things.
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Some alternative ideas:
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This PR fixes #316 and extends #954 to get it wrapped up.
I have made the following changes:
Sample Code and Plot
If you are adding or modifying a visualizer, PLEASE include a sample plot here along with the code you used to generate it.
TODOs and questions
Still to do:
CHECKLIST
pytest
?make html
?