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One can easily extract a subgraph from a NetworkX graph by specifying a list of nodes, but I couldn't find an efficient way to perform subgraph extraction by edge. For example, to extract the subgraph consists of edges with weights exceeding some user-defined threshold.

Currently I'm doing it in the following way:

## extracts all edges satisfy the weight threshold (my_network is directed):
eligible_edges = [(from_node,to_node,edge_attributes) for from_node,to_node,edge_attributes in my_network.edges(data=True) if edge_attributes['weight'] > threshold]
new_network = NetworkX.DiGraph()
new_network.add_edges_from(eligible_edges)

Is there a better way to do this?

Thanks for your kind answers.

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up vote 3 down vote accepted

That looks like the best solution.

You can save memory by using Graph.edges_iter() instead of Graph.edges(), e.g.

>>> G = nx.DiGraph(((source, target, attr) for source, target, attr in my_network.edges_iter(data=True) if attr['weight'] > threshold))
share|improve this answer
    
Great, thank you for the memory saving tip! – Moses Xu Jun 5 '13 at 1:39

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