# Drawing a graph or a network from a distance matrix?

I'm trying to plot/sketch (matplotlib or other python library) a 2D network of a big distance matrix where distances would be the edges of the sketched network and the line and column its nodes.

``````DistMatrix =
[       'a',   'b',     'c',    'd'],
['a',   0,      0.3,    0.4,    0.7],
['b',   0.3,    0,      0.9,    0.2],
['c',   0.4,    0.9,    0,      0.1],
['d',   0.7,    0.2,    0.1,    0] ]
``````

I'm searching to sketch/plot the 2d network from such (bigger: thousand of columns and lines) distance matrix: node 'a' is linked to node 'b' by an edge depth of 0.3, nodes 'c' and 'd' would be tied by an edge depth of 0.1. What are the tools/libraries I can used (distance matrix can be converted into numpy matrix) to get the sketch/graphical projection of such network? (pandas, matplotlib, igraph,...?) and some leads to do that quickly (I would not define my self Tkinter function to do that ;-) ) ? thanks for your incoming answers.

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In theory, this could be impossible for certain distance matrices. Imagine e.g. a 4 x 4 distance matrix with all entries 1. This defines a three-dimensional simplex. There is no way to embed this graph into two dimensions isometrically. What should the program do in that case? –  Turion Nov 22 '12 at 13:18
right, so no "edge length" but "edge depth that links two nodes –  sol Nov 22 '12 at 13:24

The graphviz program `neato` tries to respect edge lengths. doug shows a way to harness `neato` using networkx like this:

``````import networkx as nx
import numpy as np
import string

dt = [('len', float)]
A = np.array([(0, 0.3, 0.4, 0.7),
(0.3, 0, 0.9, 0.2),
(0.4, 0.9, 0, 0.1),
(0.7, 0.2, 0.1, 0)
])*10
A = A.view(dt)

G = nx.from_numpy_matrix(A)
G = nx.relabel_nodes(G, dict(zip(range(len(G.nodes())),string.ascii_uppercase)))

G = nx.to_agraph(G)

G.node_attr.update(color="red", style="filled")
G.edge_attr.update(color="blue", width="2.0")

G.draw('/tmp/out.png', format='png', prog='neato')
``````

yields

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I have tried the code you suggest, adapted to my needs (remove the A.view) and it hasn't worked even for just 7 nodes. G is correct. What could have gone wrong? I am using graphviz 2.36. –  Picarus Mar 21 '14 at 15:55

You can use the networkx package, that work perfectly with this kind of problems. Adjust your matrix to remove a simple numpy array like this:

``````DistMatrix =array([[0,      0.3,    0.4,    0.7],
[0.3,    0,      0.9,    0.2],
[0.4,    0.9,    0,      0.1],
[0.7,    0.2,    0.1,    0] ])
``````

then import networkx and use it

``````import networkx as nx
G = G=nx.from_numpy_matrix(DistMatrix)
nx.draw(G)
``````

if you want to draw a weighted version of the graph, you have to specify the color of each edge (at least, I couldn't find a more automated way to do it):

``````nx.draw(G,edge_color = [ i[2]['weight'] for i in G.edges(data=True) ], edge_cmap=cm.winter )
``````
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