assortativity#
- graph_tool.correlations.assortativity(g, deg, eweight=None)[source]#
Obtain the assortativity coefficient for the given graph.
- Parameters:
- g
Graph Graph to be used.
- degstring or
VertexPropertyMap Degree type (“in”, “out” or “total”) or vertex property map, which specifies the vertex types.
- eweight
EdgePropertyMap(optional, default: None) If given, this will specify the edge weights, otherwise a constant value of one will be used.
- g
- Returns:
- assortativity coefficienttuple of two floats
The assortativity coefficient, and its variance.
See also
assortativityassortativity coefficient
scalar_assortativityscalar assortativity coefficient
corr_histvertex-vertex correlation histogram
combined_corr_histcombined single-vertex correlation histogram
avg_neighbor_corraverage nearest-neighbor correlation
avg_combined_corraverage combined single-vertex correlation
Notes
The assortativity coefficient [newman-mixing-2003] tells in a concise fashion how vertices of different types are preferentially connected amongst themselves, and is defined by
\[r = \frac{\sum_i e_{ii} - \sum_i a_i b_i}{1-\sum_i a_i b_i}\]where \(a_i=\sum_je_{ij}\) and \(b_j=\sum_ie_{ij}\), and \(e_{ij}\) is the fraction of edges from a vertex of type i to a vertex of type j.
The variance is obtained with the jackknife method.
Parallel implementation.
If enabled during compilation, this algorithm will run in parallel using OpenMP. See the parallel algorithms section for information about how to control several aspects of parallelization.
References
[newman-mixing-2003]M. E. J. Newman, “Mixing patterns in networks”, Phys. Rev. E 67, 026126 (2003), DOI: 10.1103/PhysRevE.67.026126 [sci-hub, @tor]
Examples
>>> g = gt.collection.data["pgp-strong-2009"] >>> g = gt.GraphView(g, directed=False) >>> gt.assortativity(g, "out") (0.0240578552..., 0.0003272847...)