I am attempting to cluster approximately 12000 elements based on approximately 1200 binary variables using K-means. None of the conventional distance metrics (euclidean, manhattan, Hamming, Levenshtein) have produced satisfactory results.
I have devised the following metric.
Dist(x,y)= Min of P(x=0|y=1) P(y=0|x=1)
Has anyone used a similar approach to this type of problem? Are there any obvious flaws in using this metric? I am relatively new to data mining and would appreciate any feedback.