networkx.algorithms.bipartite.generators.configuration_model¶
-
configuration_model(aseq, bseq, create_using=None, seed=None)[source]¶ Returns a random bipartite graph from two given degree sequences.
- Parameters
aseq (
list) – Degree sequence for node set A.bseq (
list) – Degree sequence for node set B.create_using (
NetworkX graph instance, optional) – Return graph of this type.seed (
integer,random_state, orNone (default)) – Indicator of random number generation state. See Randomness.The graph is composed of two partitions. Set A has nodes 0 to
(len(aseq) - 1) and set B has nodes len(aseq) to (len(bseq) - 1).
Nodes from set A are connected to nodes in set B by choosing
randomly from the possible free stubs, one in A and one in B.
Notes
The sum of the two sequences must be equal: sum(aseq)=sum(bseq) If no graph type is specified use MultiGraph with parallel edges. If you want a graph with no parallel edges use create_using=Graph() but then the resulting degree sequences might not be exact.
The nodes are assigned the attribute ‘bipartite’ with the value 0 or 1 to indicate which bipartite set the node belongs to.
This function is not imported in the main namespace. To use it use nx.bipartite.configuration_model