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To combat potential collinearity issues, eliminate variables from the regression one at a time #13

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merged 2 commits into from
Oct 3, 2024

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EgorKraevTransferwise
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If we filter by pure statistical significance, we might end up, for example, dropping two features that are identical but highly predictive; this way, we eliminate one worst-t-value feature at a time from the regression so this won't happen.

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@EgorKraevTransferwise EgorKraevTransferwise merged commit 448a79f into main Oct 3, 2024
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@EgorKraevTransferwise EgorKraevTransferwise deleted the recursive branch October 3, 2024 05:23
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