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I have a dataset of 2 numerical descriptive features and 3 categorical descriptive features. I have encoded the categorical features and scaling the nuemrical features. Now I want to use a Hybrid Naive Bayes classifier contains Bernoulli NB for categorical features and Gaussian NB for numerical features. I have tried to use Ensemble method of StackingClassifier in sklearn moduel, however, it does not have parameters that can clarify which Naive Bayes method for which part of the dataset. Is there any method that I am able to combine the two methods together and then fit the data?

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I believe you can create 2 groups of features.

use classifier 1: X[feature_group_1] -> Y[labels] as one classifier and classifier 2: X[feature_group_2] -> Y[labels] as other classifier.

For prediction also, you will have to divide test features in two groups: Xtest[feature_group_1] -> ytest1 Xtest[feature_group_2] -> ytest2

Then stack their outputs to get your final answer. For stacking you can use the VotingClassifier method.

from sklearn.ensemble import VotingClassifier

eclf2 = VotingClassifier(estimators=[
    ...         ('bnb', clf1), ('gnb', clf2)],
    ...         voting='soft')
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  • I think the real question is that HOW do you MERGE the two classifiers to make a single classifier?
    – Deshwal
    Jun 6, 2020 at 11:20
  • Voting will take the average for soft. Is this a good method Hybrid?
    – Deshwal
    Jun 6, 2020 at 11:28
  • If 2 classifiers are calibrated well, 'soft' will work. But if each of them works well only in certain mutually exclusive cases then I believe we can go for 'hard" voting. It depends on how they perform individually.
    – sam
    Jun 6, 2020 at 11:33
  • Can't we just multiply the probabilities or add log probabilities to have a final probability?
    – Deshwal
    Jun 6, 2020 at 11:48
  • Multiplying probabilities might not work . For example, one classifier is pretty confident (proba 0.9) and other not much (proba 0.1), Multiplication will yield 0.09. Instead max(prob1, prob2) or even simple average is not a bad option. If we find 1 classifier is better in general than the other, we can play with weights say 0.7clf1 + 0.3clf2.
    – sam
    Jun 6, 2020 at 11:57

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