Reader small image

You're reading from  Network Science with Python and NetworkX Quick Start Guide

Product typeBook
Published inApr 2019
Reading LevelIntermediate
PublisherPackt
ISBN-139781789955316
Edition1st Edition
Languages
Concepts
Right arrow
Author (1)
Edward L. Platt
Edward L. Platt
author image
Edward L. Platt

Edward L. Platt creates technology for communities and communities for technology. He is currently a researcher at the University of Michigan School of Information and the Center for the Study of Complex Systems. He has published research on large-scale collective action, social networks, and online communities. He was formerly a staff researcher at the MIT Center for Civic Media. He contributes to many free/open source software projects, including tools for media analysis, network science, and cooperative organizations. He has also done research on quantum computing and fault tolerance. He has an M.Math in Applied Mathematics from the University of Waterloo, as well as B.S degrees in both Computer Science and Physics from MIT.
Read more about Edward L. Platt

Right arrow

Global clustering

The level of clustering or transitivity in a network can be quantified using triangles, just as the transitivity was quantified for individual nodes in Chapter 5, The Small Scale – Nodes and Centrality. These measures describe, overall, how common triangles are within a network.

The simplest measure of large-scale clustering is transitivity: the fraction of possible triangles that are present. The following example uses the transitivity() function to calculate this value for the example networks:

nx.transitivity(G_karate)
0.2556818181818182

nx.transitivity(G_electric)
0.07190412782956059

nx.transitivity(G_internet)
0.135678391959799

An alternative approach is to average the local clustering coefficient (described in Chapter 5, The Small Scale – Nodes and Centrality) over all nodes. This measure is sometimes called the global clustering coefficient. In...

lock icon
The rest of the page is locked
Previous PageNext Page
You have been reading a chapter from
Network Science with Python and NetworkX Quick Start Guide
Published in: Apr 2019Publisher: PacktISBN-13: 9781789955316

Author (1)

author image
Edward L. Platt

Edward L. Platt creates technology for communities and communities for technology. He is currently a researcher at the University of Michigan School of Information and the Center for the Study of Complex Systems. He has published research on large-scale collective action, social networks, and online communities. He was formerly a staff researcher at the MIT Center for Civic Media. He contributes to many free/open source software projects, including tools for media analysis, network science, and cooperative organizations. He has also done research on quantum computing and fault tolerance. He has an M.Math in Applied Mathematics from the University of Waterloo, as well as B.S degrees in both Computer Science and Physics from MIT.
Read more about Edward L. Platt