train and test data using KNN classifier

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sehrish
sehrish el 18 de Jul. de 2013
Comentada: Kathryn Hollowood el 12 de Mzo. de 2019
HI I want to know how to train and test data using KNN classifier we cross validate data by 10 fold cross validation. there are different commands like KNNclassify or KNNclassification.Fit. Don't know how to accomplish task Plz help me Thanks
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Kathryn Hollowood
Kathryn Hollowood el 12 de Mzo. de 2019
That he just shared also includes information about predicting the classification using knn. So you use the fitcknn to create the model (Mdl). So it would be like:
class = predict(Mdl, TestCase).
This should hopefully give you what you are looking for.

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Shashank Prasanna
Shashank Prasanna el 18 de Jul. de 2013
Have you tried out the examples in the documentation?
I don't think we can help you any better than the examples in the doc. If you have specific questions then we can address that.
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sehrish
sehrish el 19 de Jul. de 2013
Editada: sehrish el 19 de Jul. de 2013
Yes Shashank I have tried it but I could not understand where are its training and testing results? here is the code
% Classify the fisheriris data with a K-Nearest Neighbor classifier
load fisheriris
c = knnclassify(meas,meas,species,4,'euclidean','Consensus');
cp = classperf(species,c)
get(cp)
% 10-fold cross-validation on the fisheriris data using linear
% discriminant analysis and the third column as only feature for
% classification
load fisheriris
indices = crossvalind('Kfold',species,10);
cp = classperf(species); % initializes the CP object
for i = 1:10 test = (indices == i); train = ~test;
class = classify(meas(test,3),meas(train,3),species(train));
% updates the CP object with the current classification results
classperf(cp,class,test)
end
cp.CorrectRate % queries for the correct classification rate

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snehal jaipurkar
snehal jaipurkar el 26 de En. de 2018
Sir please reply soon.... can we use eucledian distance and hamming distance both in knn classifier at the same time??? I am working on a project where I have to classify gabor features using hamming distance and geometrical features using eucledian distance..... Is it possible sir?????

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