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by jncfhnb
710 days ago
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No, you want your model to be well calibrated. If the model accurately assessed a 0.55 probability of going blue, then that is what you want. People who try to correct for “unbalanced classes” and contort their model to give polarizing predictions are frankly being pretty dumb. The correct answer is to take your well calibrated probabilities and use you brain on what to do with them. |
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For that you need to threshold your predictions. Ideally you'd like your model to generate a bimodal distribution so that you can threshold without many false positives etc.