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My program generates several sets of data that enable me to render a network of vertices with their connections on a tkinter canvas. I need to be able to find the Nth neighbours of each vertex in the network.

My code already identifies the connections of each vertex to their immediate neighbours, meaning the first set of neighbours are easily found using a list comprehension using the selected vertex as the value to search the data for. I effectively want to repeat this search for each neighbour, but in the most efficient method. The data (which I have already calculated) that is being searched through to achieve this is designated as p_2 in the code below, and is of the form: (Origin Coordinate, Neighbour Coordinate), and Coordinates_xyz is a list of the unique vertices of the network. The code below demonstrates how I am currently identifying only the first neighbours.

Again, I already have all the neighbour data, I simply need the best method to search through this data to find connections to each vertex.

Clarity:

Example of what I'm trying to do:
One type of data my program generates represents a network of vertices in a repeating square pattern. Each vertex (away from the edges) has 4 neighbours, and each neighbour then has 4 neighbours (although one neighbour of these neighbours is the previous vertex so is discounted) and so on. If I were to choose vertex 20 with coordinates (x20, y20, z20) and search for neighbours in p_2 it may return (for example):
(Origin), (Neighbour)
(x20, y20, z20), (x21, y21, z21)
(x23, y23, z23), (x20, y20, z20)
(x26, y26, z23), (x20, y20, z20)
(x20, y20, z20), (x30, y30, z30)
I can then clearly see that vertex 21, 23, 26 and 30 are the neighbouring points in the network to vertex 20. However, I then need to repeat the search process for 21, 23, 26 and 30 respectively to find 2nd nearest neighbours. For N nearest neighbours, I must then find a way to make an efficient (as possible) method for repeating this search for every neighbour and proceed outwards from vertex 20, while keeping track of the order of the neighbour. Again, I'm aware this will be taxing for large N, but it will generally not operate at N>4. The code below solves my problem for N = 1.

Thank you for any help you can provide.

matching_1_NN_list=[]
matching_1_NN_list[:]=[]    
for vertex in xrange(len(Coordinates_xyz)):
    #Target vertex Coordinates_xyz[vertex] 
    matching_1_NN = [x for x in p_2 if Coordinates_xyz[vertex] in x]
    matching_1_NN_Component_0=column(matching_1_NN, 0)
    matching_1_NN_Component_1=column(matching_1_NN, 1)
    for x in matching_1_NN_Component_0:
        if x == Coordinates_xyz_final[vertex]:
            pass
        else:
            x=x, vertex, 1 #coordinates, vertex number, order (1 = first neighbour)
            matching_1_NN_list.append(x)


    for x in matching_1_NN_Component_1:
        if x == Coordinates_xyz_final[vertex]:
            pass
        else:
            x=x, vertex, 1
            matching_1_NN_list.append(x)
    matching_1_NN_list=set(list(matching_1_NN_list)) #Removes Duplicates
share|improve this question
    
What do you mean by "up to 2nd nearest neighbours."? It's either "up to 2 nearest neighbours" or "2nd nearest neighbour". The same problem is with the notion "Nth neighbours" you're using - it doesn't make sense. –  BartoszKP Oct 31 '13 at 14:27
    
Having trouble understanding. Are you talking about the nearest spatial neighbours? If so where in your code are you computing distances? –  Mr E Oct 31 '13 at 14:29
    
If you do mean the nearest spatial neighbours and this isn't a learning exercise, use docs.scipy.org/doc/scipy/reference/generated/… –  Mr E Oct 31 '13 at 14:30
    
Apologies, when I say 'up to 2nd nearest neighbours', I simply mean that I wish to find and include all first and second neighbours. Again, I apologise for any confusion, and will update the question for clarity. I simply wished to avoid any responses that only returned 2nd NN. –  MarkyD43 Oct 31 '13 at 14:31
1  
@MarkyD43 It is helpful if you are able to post code that is as complete as possible and as minimal as possible. Complete meaning: It would be best if we could directly run the code you've provided and see the problem for ourselves. As it is, we can only guess what the rest of your program is doing and where the problems may originate. Minimal meaning: Try to present your code without any irrelevant parts - try and isolate the problem before you show it to us. Cut out some function calls and replace with dummy values, etc. See: sscce.org You will get much better answers if you can do this! –  Mr E Oct 31 '13 at 14:44

1 Answer 1

up vote 1 down vote accepted

It appears a large part in optimizing this is improving the way you search for neighbours. In your current approach you loop over the whole list of pairs and do loads of membership checking for each time you need to find the neighbours of a vertex. Much better would be to do this step only once, and lookup the result in a dictionary. For example if you have the following vertices:

 7 |  E
 6 |
 5 |
 4 |  D
 3 |
 2 |     B  C
 1 |  A
 0 +----------
   0  1  2  3

With the following list of nearest neighbours:

p_2 = [('A', 'B'),
       ('B', 'C'),
       ('C', 'B'),
       ('D', 'B'),
       ('E', 'D')]

You could do e.g.:

from collections import defaultdict

p_2_dict = defaultdict(set)
for a, b in p_2:
    p_2_dict[a].add(b)
    p_2_dict[b].add(a)

def find_neigbours(start_vertex, levels):
    found = []
    from_vertices = [start_vertex]
    for i in range(1, levels+1):
        new_from_vertices = []
        for vertex in from_vertices:
            for neighbour in p_2_dict[vertex]:
                new_from_vertices.append(neighbour)
                found.append( (neighbour, i) )
        from_vertices = new_from_vertices
    return found

This however finds a lot of duplicates. Like you did in your example code you can use sets to store only unique values. Also if you encounter the start vertex you can skip it.

def find_neigbours(start_vertex, levels):
    found = set()
    from_vertices = [start_vertex]
    for i in range(1, levels+1):
        new_from_vertices = set()
        for vertex in from_vertices:
            for neighbour in p_2_dict[vertex]:
                if neighbour == start_vertex:
                    continue
                new_from_vertices.add(neighbour)
                found.add( (neighbour, i) )
        from_vertices = new_from_vertices
    return found

Still, this stores duplicate vertices if the "order of neighbour being" it is associated with is different than what is already stored. What would you like to do with those? Only store the order of when you first encountered a particular vertex?

Output:

In [49]: find_neigbours('A', 1)
Out[49]: set([('B', 1)])

In [50]: find_neigbours('A', 2)
Out[50]: set([('B', 1), ('D', 2), ('C', 2)])

# 'B' encountered with different order:
In [51]: find_neigbours('A', 3)
Out[51]: set([('B', 1), ('D', 2), ('B', 3), ('E', 3), ('C', 2)])
share|improve this answer
    
This is dead on, I'm just going to adapt it to my code, but thank you so much! –  MarkyD43 Oct 31 '13 at 17:43

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