minkowski_distance_p(x, y, p=2)
For efficiency, this function computes the L**p distance but does not extract the pth root. If p
is 1 or infinity, this is equal to the actual L**p distance.
Input array.
Input array.
Which Minkowski p-norm to use.
Compute the pth power of the L**p distance between two arrays.
>>> from scipy.spatial import minkowski_distance_pSee :
... minkowski_distance_p([[0,0],[0,0]], [[1,1],[0,1]]) array([2, 1])
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scipy.spatial._kdtree.minkowski_distance_p
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