# Find the closest match of a list in a list containing lists

I have a list with two elements like this:

``````list_a = [27.666521, 85.437447]
``````

and another list like this:

``````big_list = [[27.666519, 85.437477], [27.666460, 85.437622], ...]
``````

And I want to find the closest match of `list_a` within `list_b`.

For example, here the closest match would be `[27.666519, 85.437477]`.

How would I be able to achieve this?

I found a similar problem here for finding the closest match of a string in an array but was unable to reproduce it similarly for the above mentioned problem.

P.S.The elements in the list are the co-ordinates of points on the earth.

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Which norm do you want to use to define the "distance"? – Sven Marnach Jul 24 '12 at 11:38
if you want to do this often, you should think about a better data structure. – moooeeeep Jul 24 '12 at 11:44

From your question, it's hard to tell how you want to measure the distance, so I simply assume you mean Euclidean distance.

You can use the `key` parameter to `min()`:

``````from functools import partial

def distance_squared(x, y):
return (x[0] - y[0])**2 + (x[1] - y[1])**2

print min(big_list, key=partial(distance_squared, list_a))
``````
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Beat me to it by seconds, and yours is more generic. I love the use of partial. Have a well-deserved upvote! – Lauritz V. Thaulow Jul 24 '12 at 11:42
Thanks for the answer. I should have mentioned in my question that the distance between the points was the distance between two co-ordinates on earth, but I guess that for a very small difference in distance it wouldn't matter much. – SUB0DH Jul 28 '12 at 2:53

Assumptions:

• You intend to make this type query more than once on the same list of lists
• Both the query list and the lists in your list of lists represent points in a n-dimensional euclidean space (here: a 2-dimensional space, unlike GPS positions that come from a spherical space).

This reads like a nearest neighbor search. Probably you should take into consideration a library dedicated for this, like scikits.ann.

Example:

``````import scikits.ann as ann
import numpy as np
k = ann.kdtree(np.array(big_list))
indices, distances = k.knn(list_a, 1)
``````

This uses euclidean distance internally. You should make sure, that the distance measure you apply complies your idea of proximity.

You might also want to have a look on Quadtree, which is another data structure that you could apply to avoid the brute force minimum search through your entire list of lists.

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