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I am building a classifier for some 2D data.

I have some training data for which I know the classes and have plotted these on a graph to see the clustering.

To the observer, there are obvious, separate clusters, but unfortunately they are spread out over lines rather than in tight clusters. One line-spread goes up at about an 80 degree angle, another at 45 degree and another at about 10 degrees from horizontal, but all three seem to point back to the origin.

Clusters

I want to perform a nearest-neighbour classification on some test data, and from the looks of things, if the test data is very similar to the training data a 3-nearest-neighbour classifier would work fine, except when the data is close to the origin of the graph, in which case the three clusters are quite close together and there might be a few errors.

Should I be coming up with some estimated gaussian distributions for my clusters? If so, I'm not sure how I can combine this with a nearest neighbour classifier?

Be grateful for any input.

Cheers

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Your graph does not show many observations near the origin, so you cannot expect classification to work stably there. Either way it would depend upon the distance measure you use (have you scaled both variables?). As an alternative to nearest neighbor, if this makes sense for your data, transform the data in polar coordinates and do LDA on your data. –  Nick Sabbe Apr 19 '11 at 13:31

2 Answers 2

Transform all your points to [r, angle], and scale r down to the range 0 to 90 too, before running nearest-neighbor.
Why ? NN uses Euclidean distance between points and centres (in most implementations),
but you want distance( point, centre ) to be more like sqrt( (point.r - centre.r)^2 + (point.angle - centre.angle)^2 )
than sqrt( (point.x - centre.x)^2 + (point.y - centre.y)^2 ) .
Scaling r down to 30 ? 10 ? would weight angle more than r, which seems to be what you want.

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Why use k-NN for that purpose? any linear classifier would do the trick. try solving it with SVM and you'll get much better results. If you insist of using kNN, you clearly have to scale the features and transform them into polar ones as mentioned here.

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