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I have implemented k-nearest algorithm in my system. It consists from 26 classes, each of 100 samples. In my case, K=7 and it was completely trial and error to get the best classification result.

I know that K should be chosen wisely to reduce the noise on the classification. But what about the number of samples? Is there any general rule such as "the more samples the better result"? Does it depend on something?

Thank you for all your responses.

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You could try considering whatever underlying mechanism is generating your data, or whatever background knowledge you have on the problem, which might give you an idea of the relative size of noise and true underlying variation. E.g. predicting favourite sports team from location I would expect more change than predicting favourite sport, so would use smaller k. However I don't know of much general guidance, except to use cross-validation.

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