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Have the implementation of reliefF weighted with the prior probability of each class? #78

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dahaiyu opened this issue May 24, 2021 · 0 comments

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@dahaiyu
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dahaiyu commented May 24, 2021

File: scoring_utils.py
Function: compute_score(attr, mcmap, NN, feature, inst, nan_entries, headers, class_type, X, y, labels_std, data_type, near=True)

In compute_score, the parameter mcmap stores class frequencies, but it doesnot seem to have been used in the the process of normalization.

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