Getting top n edges in a graph networkx

I have a directed multi-graph which with weights. The edge addition looks like

`````` g.add_edge(source_a,source_b, weight= some_Weight)
``````

When the graph is built, I want to have edges only between top nodes between a node based on a weights. So if my graph is like

`````` 1,2,0.5
1,2,0.6
1,2,0.4
1,3,0.5
...
``````

I want to only see top 2 edges between for each node. By top I mean, edges with top weights. So the output will be something like

``````1,2,0.6
1,2,0.5
1,3,0.5
``````

I am deleting rest of the edges. How do I do this using python/networkx?

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Define Top Two: first two added? Two with highest weights leaving a particular node? – Crisfole Apr 19 '13 at 18:37
edited :) thanks – Fraz Apr 19 '13 at 18:39
Won't it be easier to filter the data before building the graph? You can use something like `itertools.groupby` to do the messy work for you. – YXD Apr 19 '13 at 19:02

You can simply iterate through the edges with a particular attribute:

``````import networkx as nx

G = nx.MultiGraph()

cutoff = .45

top = [edge for edge in G.edges_iter(data=True)
if edge[2]['weight'] > cutoff]

print top
``````

This gives:

``````[(1, 2, {'weight': 0.5}), (1, 2, {'weight': 0.6}), (1, 3, {'weight': 0.5})]
``````

From here it would be simple to create a new graph with only these edges.

``````G2 = nx.MultiGraph(top)
``````
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