
where si is the standard deviation of the xi and yi over the sample set. Mahalanobis distance is preserved under full-rank linear transformations of the space spanned by the data. This means that if the data has a nontrivial nullspace, Mahalanobis distance can be computed after projecting the data (non-degenerately) down onto any space of the appr...
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http://en.wikipedia.org/wiki/Mahalanobis_distance
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