How to Classify New Dataset using Two trained models
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I have trained two models on a dataset
I want to Classify new data using the both the trained model. But Classify take one trained network. How can i do that?
Resnet50.mat
Resnet18.mat
rxTestPred = classify(resnet.trainedNet,rxTestFrames);
testAccuracy = mean(rxTestPred == rxTestLabels);
disp("Test accuracy: " + testAccuracy*100 + "%")
2 Comments
KSSV
on 28 Jan 2022
Question is not clear. What problem you have in using the trained model ofr new data?
hammad younas
on 28 Jan 2022
Answers (1)
yanqi liu
on 8 Feb 2022
yes,sir,may be use different load variable,such as
net1 = load('Resnet50.mat')
net2 = load('Resnet18.mat')
rxTestPred = classify(net1.resnet.trainedNet,rxTestFrames);
testAccuracy = mean(rxTestPred == rxTestLabels);
disp("Resnet50 Test accuracy: " + testAccuracy*100 + "%")
rxTestPred = classify(net2.resnet.trainedNet,rxTestFrames);
testAccuracy = mean(rxTestPred == rxTestLabels);
disp("Resnet18 Test accuracy: " + testAccuracy*100 + "%")
3 Comments
Med Future
on 8 Feb 2022
@yanqi but the prediction are different, i want two models to give combine prediction. Not each model to give its prediction like you can say ensemble learning /majority voting
Nagwa megahed
on 2 Jun 2022
please i ask if you reach to how implement ensemble learning in matlab ?? as i need to perform ensemble learning between more than three different networks
David Willingham
on 3 Jun 2022
See this page for information on how to work with multi-input multi-output networks in MATLAB: Multiple-Input and Multiple-Output Networks
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