Stacking two semi suprvised models

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MAHMOUD EID
MAHMOUD EID on 14 Dec 2022
Edited: Rohit on 21 Mar 2023
I have two trained semisuprvised algorithms ( graph based and SVM). How to combine the models together ?

Answers (1)

Rohit
Rohit on 21 Mar 2023
Edited: Rohit on 21 Mar 2023
You can combine two trained semi-supervised algorithms using various methods. Here are some examples of how to implement these methods:
  1. Majority Voting
graph_output = graph_based_algorithm(test_data);
svm_output = svm_algorithm(test_data);
% Combine the outputs using majority voting
ensemble_output = mode([graph_output, svm_output], 2);
2. Model stacking
graph_features = graph_based_algorithm(data);
svm_output = svm_algorithm(graph_features);
Note that these are just examples, and the exact implementation will depend on the specific characteristics of your algorithms and data.
Similarly, you can experiment with different ensemble methods and see what works best for your use case.

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