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Maybe I'm rather stupid but I just can't find a satisfying answer: Using the KNN-algorithm, say k=5. Now I try to classify an unknown object by getting its 5 nearest neighbors. What to do, if 4 nearest neighbors have different distances and 2 or more have the same distance but are the nearest objects after the 4 ones? Which object of these 2 ore more should be chosen as the 5th nearest neighbor?

Thanks in advance :)

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Which object of these 2 or more should be chosen as the 5th nearest neighbor?

It really depends on how you want to implement it.

Most algorithms will do one of three things:

  1. Include all equal distance points, so for this estimation, they'll use 6 points, not 5.
  2. Use the "first" found point of the two equal distant.
  3. Pick a random (usually with a consistent seed, so results are reproducable) point from the 2 points found.

That being said, most algorithms based on radial searching have an inherent assumption of stationarity, in which case, it really shouldn't matter which of the options above you choose. In general, any of them should, theoretically, provide reasonable defaults (especially since they're the furthest points in the approximation, and should have the lowest effective weightings).

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Ah okay, thank you very much :) (This information should be added to the wikipedia article about KNN...) – Gwaihir Feb 3 '11 at 18:53

Another and interesting option is to use the nearest neighbor like this:

  • You calculate the distances of the 5 nearest neighbors from each class to the sample: you will have 5 distances from each class.

  • Then you get the mean distance for each class.

  • That lower mean distance will be the class you will assign to the sample.

This way is effective for datasets of classes that overlap.

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If you have another distance function, you can use it to break the tie. Even a bad one can do the job, better if you have some heuristics. For instance, if you know that one of the feature considered to compute your main distance is more significant, use only this one to solve the tie.

If it's not the case, pick at random. The run several times your program on the same test set, to check if the random choice matters.

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Maybe you can try fuzzy knn. For the choice of k I think lots of experiments should be done in order to get the best classification result.

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