NetworkX 1.6#
Release date: 20 November 2011
Highlights#
New functions for finding articulation points, generating random bipartite graphs, constructing adjacency matrix representations, forming graph products, computing assortativity coefficients, measuring subgraph centrality and communicability, finding k-clique communities, and writing JSON format output.
New examples for drawing with D3 Javascript library, and ordering matrices with the Cuthill-McKee algorithm.
More memory efficient implementation of current-flow betweenness and new approximation algorithms for current-flow betweenness and shortest-path betweenness.
Simplified handling of âweightâ attributes for algorithms that use weights/costs/values.
Updated all code to work with the PyPy Python implementation http://pypy.org which produces faster performance on many algorithms.
Graph Classes#
The degree* methods in the graph classes (Graph, DiGraph, MultiGraph, MultiDiGraph) now take an optional weight= keyword that allows computing weighted degree with arbitrary (numerical) edge attributes. Setting weight=None is equivalent to the previous weighted=False.
Weighted graph algorithms#
Many âweightedâ graph algorithms now take optional parameter to specify which edge attribute should be used for the weight (default=âweightâ) (ticket https://networkx.lanl.gov/trac/ticket/573)
In some cases the parameter name was changed from weighted, to weight. Here is how to specify which edge attribute will be used in the algorithms:
Use weight=None to consider all weights equally (unweighted case)
Use weight=âweightâ to use the âweightâ edge attribute
Use weight=âotherâ to use the âotherâ edge attribute
Algorithms affected are:
to_scipy_sparse_matrix, clustering, average_clustering, bipartite.degree, spectral_layout, neighbor_degree, is_isomorphic, betweenness_centrality, betweenness_centrality_subset, vitality, load_centrality, mincost, shortest_path, shortest_path_length, average_shortest_path_length
Isomorphisms#
Node and edge attributes are now more easily incorporated into isomorphism checks via the ânode_matchâ and âedge_matchâ parameters. As part of this change, the following classes were removed:
WeightedGraphMatcher
WeightedDiGraphMatcher
WeightedMultiGraphMatcher
WeightedMultiDiGraphMatcher
The function signature for âis_isomorphicâ is now simply:
is_isomorphic(g1, g2, node_match=None, edge_match=None)
See its docstring for more details. To aid in the creation of ânode_matchâ and âedge_matchâ functions, users are encouraged to work with:
categorical_node_match
categorical_edge_match
categroical_multiedge_match
numerical_node_match
numerical_edge_match
numerical_multiedge_match
generic_node_match
generic_edge_match
generic_multiedge_match
These functions construct functions which can be passed to âis_isomorphicâ. Finally, note that the above functions are not imported into the top-level namespace and should be accessed from ânetworkx.algorithms.isomorphismâ. A useful import statement that will be repeated throughout documentation is:
import networkx.algorithms.isomorphism as iso
Other#
attracting_components
A list of lists is returned instead of a list of tuples.
condensation
The condensation algorithm now takes a second argument (scc) and returns a graph with nodes labeled as integers instead of node tuples.
degree connectivity
average_in_degree_connectivity and average_out_degree_connectivity have been replaced with
average_degree_connectivity(G, source=âinâ, target=âinâ)
and
average_degree_connectivity(G, source=âoutâ, target=âoutâ)
neighbor degree
average_neighbor_in_degree and average_neighbor_out_degreey have have been replaced with
average_neighbor_degree(G, source=âinâ, target=âinâ)
and
average_neighbor_degree(G, source=âoutâ, target=âoutâ)