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Editorial Team
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Editorial Team
Asked: May 23, 20262026-05-23T07:51:21+00:00 2026-05-23T07:51:21+00:00

I Have a N x D dimensional features, which I need to rank according

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I Have a N x D dimensional features, which I need to rank according to their distance to a 1 x D dimensional vector. Any fast way to implement that in python without recursively apply argmin?

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  1. Editorial Team
    Editorial Team
    2026-05-23T07:51:21+00:00Added an answer on May 23, 2026 at 7:51 am

    Something really simple is Squared Euclidean Distance, and it’s implementation would be like:

    In []: F= randn(5, 3)
    In []: t= randn(1, 3)
    In []: ((F- t)** 2).sum(1)
    Out[]: array([  8.80512,   4.61693,   2.6002,   3.3293,  12.41800])
    

    Where F are the features and t the target vector. Thus the ranking would be:

    In []: ((F- t)** 2).sum(1).argsort()
    Out[]: array([2, 3, 1, 0, 4])
    

    However if you are able to describe more on your case, there might exist more suitable measures, like Mahalanobis distance.

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