# Is there an easy way to prune disconnected networks in a NetworkX graph?

I'm using Python's NetworkX package to calculate a bunch of network statistics for networks of varying size. I'm sweeping an independent parameter that systematically prunes edges, so sometimes a small network will become disconnected from the main network. Is there an easy way to detect and remove those smaller disconnected networks in NetworkX?

Sorin is correct. The function is called `connected_component_subgraphs` in NetworkX.

Here's some code that finds the largest network in a NetworkX graph:

``````cur_graph = # whatever graph you're working with

if not nx.is_connected(cur_graph):
# get a list of unconnected networks
sub_graphs = nx.connected_component_subgraphs(cur_graph)

main_graph = sub_graphs[0]

# find the largest network in that list
for sg in sub_graphs:
if len(sg.nodes()) > len(main_graph.nodes()):
main_graph = sg

cur_graph = main_graph
``````

As the accepted answer is now deprecated here is a better solution for an undirected graph = G:

``````# Generate connected components and select the largest:
largest_component = max(nx.connected_components(G), key=len)

# Create a subgraph of G consisting only of this component:
G2 = G.subgraph(largest_component)
``````

For a directed graph, you will need either `strongly_connected_components(G)` or `weakly_connected_components(G)` in the place of `connected_components(G)`.

https://networkx.github.io/documentation/stable/reference/algorithms/component.html

The generic algorithm is called connected components. You can find a description here: http://en.wikipedia.org/wiki/Connected_component_(graph_theory). It's fairly easy to implement and linear in the number of edges to run.

• `nx.connected_components` in modern versions. Commented Nov 2, 2019 at 8:50