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Hi @9sea, following the same patterns as those used in the reference MOA implementation, the inputs refer to a 0-1 loss. So, 0 means no error and 1 represents a misclassification. |
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The variable n_one is in river.drift.binary.fhddm.
My personal understanding is that a correct prediction is typically marked as 1, while an incorrect one is marked as 0, which is also mentioned in the original paper. However, in the code, it seems that a correct prediction is marked as 0 and an incorrect prediction as 1, which is the opposite of what I expected. This has caused me some confusion, and I would appreciate it if someone could clarify this for me. Thank you!
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