The idea of the K Nearest Neighbor algorithm is using the features of an example - which are known, to determine the classification of it - which is unknown.

First, some classified samples are supplied to the algorithm. When a new non-classified sample is given, the algorithm finds the k-nearest-neighbor to the new sample, and determines what should its classification be, according to the classification of the classified samples, which were given as training set.

The algorithm is sometimes called Lazy Classification because during "learning" it does nothing - just stores the samples, and all the work is done during classification.

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