Shapley based feature selection

Hello everyone, I am trying to perform Shapley based feature selection. I wrote the code below but I did not use the Ytest variable. Xtest does not contain the class labels; they are in the Ytest variable. I am a little confused. Am I doing something wrong? Thanks for the help.
DataSet = load('Seeds.txt');
[~,nFeatures] = size(DataSet);
X = DataSet(:,(1:nFeatures - 1));
Y = DataSet(:,nFeatures);
c = cvpartition(Y, 'Holdout', 0.20, 'Stratify', true);
Xtrain = X(training(c), :);
Xtest = X(test(c), :);
Ytrain = Y(training(c));
Ytest = Y(test(c));
Mdl = fitcecoc(Xtrain, Ytrain);
LimeRes = shapley(Mdl);
FitRes = fit(LimeRes, Xtest);
plot(FitRes)

3 comentarios

the cyclist
the cyclist el 1 de Mzo. de 2025
Can you upload the data? You can use the paper clip icon in the INSERT section of the toolbar.
MB
MB el 2 de Mzo. de 2025
Sorry for the late reply. I’ve just uploaded the data.
MB
MB el 11 de Mzo. de 2025
Editada: MB el 11 de Mzo. de 2025
I found a Python example that can help: Python Example.

Iniciar sesión para comentar.

 Respuesta aceptada

the cyclist
the cyclist el 2 de Mzo. de 2025

1 voto

The Shapley values don't require the class labels (i.e. the actual responses) to determine feature importance.
The Shapley values only indicate, for a given model, how much each feature affects the predicted class label. For example, suppose you are trying to predict whether someone is going to repay their car loan on time. For borrower Alice, the model might predict "NO", because she already has a lot of debt. For borrower Bob, the model might also predict "NO", but because Bob has low income (even if he has low debt).
The Shapley values of debt and income will be different for Alice and Bob. It does not matter whether they actually default or not. The Shapley value is explaining only where the prediction came from.
I hope that helps.

Más respuestas (1)

Walter Roberson
Walter Roberson el 2 de Mzo. de 2025
Editada: Walter Roberson el 2 de Mzo. de 2025
YtestPred = predict(Mdl, Xtest);
test_accuracy = nnz(Ytest(:) == YtestPred(:)) / numel(Ytest) * 100;
fprintf('test accuracy: %.2f\n', test_accuracy);

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R2024b

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MB
el 1 de Mzo. de 2025

Editada:

MB
el 11 de Mzo. de 2025

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