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Can K-nearest neighbor classify more than two classes?

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gugu
gugu el 17 de Dic. de 2017
Comentada: Ehsan Altayef el 20 de Abr. de 2020
I want to know that K-nearest neighbor classifier can classify more than two classes? I don't understand much about this classifier.
  3 comentarios
gugu
gugu el 18 de Dic. de 2017
Ok. I'll have a go at it. Actually, I want to classify three classes and now I'm currently using multi-svm. It doesn't meet my requirements. So, I want to change the classifier. Thank you for your answer.
Ehsan Altayef
Ehsan Altayef el 20 de Abr. de 2020
i need knn algorithm code, please anyone has could you send it to me on Tripoli201919@gmail.com.Thank you in advance.

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the cyclist
the cyclist el 17 de Dic. de 2017
Yes, it can. There is an example of a 3-class classification in the documentation for fitcknn, in the Statistics and Machine Learning Toolbox.
load fisheriris
X = meas;
Y = species;
% X is a numeric matrix that contains four petal measurements for 150 irises.
% Y is a cell array of character vectors that contains the corresponding iris species.
% Train a 5-nearest neighbors classifier. It is good practice to standardize noncategorical predictor data.
Mdl = fitcknn(X,Y,'NumNeighbors',5,'Standardize',1)
  4 comentarios
Image Analyst
Image Analyst el 18 de Dic. de 2017
Not necessarily. Denser data may make it more accurate, but just expanding the feature space so that it's bigger will not affect the results. For example if you had 500 training points in the range x=4-5, and y = 4-5, and you increased it to 2000 training points in that same area would make it more accurate. However if you still had 500 points there and just added another few thousand points in the range 0-10 in both x and y, would not necessarily make your classifications in the range 4-5 any better than what they were, since it would be using the same points as before.
gugu
gugu el 18 de Dic. de 2017
It's clear on my mind. Thank you so much.

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