awesome-network-analysis/README.md
2016-04-11 22:38:02 +02:00

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Awesome Network Analysis Awesome

An awesome list of resources to construct, analyze and visualize network data.

Table of Contents

Inspired by Awesome Deep Learning and Awesome Math.

Books

General Overviews

  1. Networks. An Introduction, by Mark E.J. Newman (2010).

Graph Theory

  1. Graph Theory, by Reinhard Diestel - Full electronic version online (2000).

Method-specific

  1. Exponential Random Graph Models for Social Networks, edited by Dean Lusher, Johan Koskinen and Garry Robins (2013).

Software-specific

  1. Analyzing Social Networks (using UCINET), by Stephen P. Borgatti, Martin G. Everett and Jeffrey C. Johnson (2013).
  • Network Analysis with R/igraph, by Gabor Csárdi, Thomas Nepusz and Eduardo M. Airoldi (in preparation).
  • Network Analysis with Python/igraph, by Thomas Nepusz, Gabor Csárdi and Eduardo M. Airoldi (in preparation).
  • Statistical Analysis of Network Data with R, by Eric D. Kolaczyk and Gabor Csárdi (2014).

Topic-specific

  1. Neighbor Networks. Competitive Advantage Local and Personal, by Ronald S. Burt (2010).

Conferences

  1. European Conference on Social Networks (EUSN).

Courses

  1. Complex Networks, by Peter Sheridan Dodds (University of Vermont, 2016).

Datasets

  1. Bill Cosponsorship Networks in European Parliaments.

Journals

  1. Applied Network Science (Springer Open).

Professional groups

  1. AFS RT 26 “Réseaux sociaux” - Thematic Network of the French Sociological Association, in French.

Review Articles

  1. "Network Analysis and Political Science" (Annual Review of Political Science, 2011).

Software

  1. Cytoscape - Cross-platform Java program to build, analyze and visualize networks.
  • Discourse Network Analyzer (DNA) - Qualitative content analysis tool with network export facilities, written in Java with R integration.
  • igraph - C library of network analysis tools; also exists as packages for Python and R.
  • Gephi - Cross-platform, free and open source tool for network visualization.
  • Graphviz - Cross-platform software to draw graphs in the DOT language.
  • MuxViz - Cross-platform, free and open source multilayer network analysis And visualization platform, based on R and GNU Octave.
  • Neo4j - Open source, scalable graph database, used by companies like Linkurious.
  • networks.tb - C program designed for analyzing socio-semantic networks; runs on Linux and Mac OS X.
  • NodeXL - Free, open-source template to explore network graphs with Microsoft Excel.
  • ORA-LITE - Windows program for dynamic meta-network assessment and analysis.
  • Pajek - Windows program for large network analysis, free for noncommercial use.
  • PNet - Simulation and estimation of exponential random graph models (ERGMs), written in Java for Windows.
  • Siena - Simulation Investigation for Empirical Network Analysis, formerly a Windows program, now an R package.
  • Stanford Network Analysis Project - C++ general purpose network analysis and graph mining library; available as a Python library and through NodeXL.
  • UCINET - Windows commercial software package for the analysis of social network data.
  • Visone - Cross-platform Java network analysis and visualization program, free for noncommercial use.
  • VOSviewer - Cross-platform Java tool for constructing and visualizing bibliometric networks.

JavaScript

For more awesome JavaScript libraries, see the Awesome JavaScript list.

  1. d3.js - JavaScript visualization library that can plot force-directed graphs.
  • jLouvain - Louvain community detection for Javascript (example).
  • Sigma - JavaScript library dedicated to graph drawing.
  • vis.js - JavaScript library with network visualization capabilities.

Python

Most items below are from a Google spreadsheet by Michał Bojanowski and others.
For more awesome Python packages, see the Awesome Python list.

  1. graph-tool - Python module for network manipulation and analysis, written mostly in C++ for speed.
  • graphviz - Python renderer for the DOT graph drawing language.
  • linkpred - Assess the likelihood of potential links in a future snapshot of a network.
  • networkx - Python package for the creation, manipulation, and study of the structure, dynamics, and functions of complex networks.
  • python-igraph - Python version of the igraph network analysis package.

R

See also this Google spreadsheet by Ian McCulloh and others.
For more awesome R resources, see the Awesome R and Awesome R Books lists.

  1. Bergm - Tools to analyse Bayesian exponential random graph models (BERGM).
  • CCAS - A statistical model for communication networks.
  • concoR - A translation of the CONCOR network blockmodeling algorithm (blog post).
  • ergm - Estimation of Exponential Random Graph Models (ERGM).
  • GERGM - Estimation and diagnosis of the convergence of Generalized Exponential Random Graph Models (GERGM).
  • geomnet - A single-geometry approach to network visualization with ggplot2.
  • ggnetwork - A multiple-geometries approach to plot network objects with ggplot2.
  • ggraph - A grammar of graph graphics built in the spirit of ggplot2.
  • hergm - Estimate and simulate hierarchical exponential-family random graph models (HERGM) with local dependence.
  • igraph - A collection of network analysis tools.
  • influenceR - Compute various node centrality network measures by Burt, Borgatti and others.
  • latentnet - Latent position and cluster models for network objects.
  • networkD3 - D3 JavaScript network graphs from R.
  • ndtv - Tools to construct animated visualizations of dynamic network data in various formats.
  • network - Basic tools to manipulate relational data in R.
  • networkDynamic - Support for dynamic, (inter)temporal networks.
  • rgexf - Export network objects from R to GEXF, for manipulation with network software like Gephi or Sigma.
  • Rgraphviz - Support for using the Graphviz library and its DOT language from within R.
  • RSiena - Simulation Investigation for Empirical Network Analysis; fits models to longitudinal network data.
  • sna - Basic network measures and visualization tools.
  • spnet - Methods for dealing with spatial social networks.
  • statnet - The project behind many R network analysis packages.
  • tergm - Fit, simulate and diagnose models for temporal exponential-family random graph models (TERGM).
  • tnet - Network measures for weighted, two-mode and longitudinal networks.
  • tsna - Tools for temporal social network analysis.
  • visNetwork - Using vis.js library for network visualization.
  • xergm - Extensions of Exponential Random Graph Models (ERGM, GERGM, TERGM, TNAM and REM).

Tutorials

  1. Analyse des réseaux : une introduction à Pajek, in French (2011).

Varia

  1. Blog Posts About Networks by Baptiste Coulmont, in French.

Contribution Guidelines

Please contribute to this list by sending a pull request after reading the Contribution Guidelines for stylistic indications.

  • All resources are listed alphabetically, with date and language mentions when relevant.
  • Authors are mentioned for books and courses only.
  • Journals require the name of the publisher.
  • Review Articles require a journal and a date.
  • R packages: please cite the stable CRAN version when it exists.
  • Python packages: please cite the PyPi version when it exists.
  • Software should be at least free for noncommercial use (only few exceptions will be granted).

Remember that an awesome list has to be, well, awesome. The "Awesome Manifesto" states:

Only awesome is awesome

Research if the stuff you're including is actually awesome. Put only stuff on the list you or another contributor can personally recommend and rather leave stuff out than include too much.

...

Comment on why something is awesome

Apart from suggesting a particular item on your list, you should also inform your readers why it's on the list and how they will benefit from it.

Please also add your name to the copyright waiver below, with an optional link to your personal homepage, GitHub profile or social media profile.

License

CC0

To the extent possible under law, the authors of this list (by chronological order: François Briatte, Ian McCulloh, Aditya Khanna, Manlio De Domenico, Patrick Kaminski) have waived all copyright and related or neighboring rights to this work.