HyperNetX is a Python library for the creation and study of hypergraphs.
Project description
The HyperNetX library provides classes and methods for the analysis and visualization of complex network data modeled as hypergraphs. The library generalizes traditional graph metrics.
HypernetX was developed by the Pacific Northwest National Laboratory for the Hypernets project as part of its High Performance Data Analytics (HPDA) program. PNNL is operated by Battelle Memorial Institute under Contract DE-ACO5-76RL01830.
Principle Developer and Designer: Brenda Praggastis
Visualization: Dustin Arendt, Ji Young Yun
High Performance Computing: Tony Liu, Andrew Lumsdaine
Principal Investigator: Cliff Joslyn
Program Manager: Brian Kritzstein
Contributors: Sinan Aksoy, Dustin Arendt, Cliff Joslyn, Nicholas Landry, Andrew Lumsdaine, Tony Liu, Brenda Praggastis, Emilie Purvine, Mirah Shi, François Théberge
The code in this repository is intended to support researchers modeling data as hypergraphs. We have a growing community of users and contributors. Documentation is available at: <https://pnnl.github.io/HyperNetX/>
For questions and comments contact the developers directly at: <hypernetx@pnnl.gov>
New Features of Version 1.0:
Hypergraph construction can be sped up by reading in all of the data at once. In particular the hypergraph constructor may read a Pandas dataframe object and create edges and nodes based on column headers. The new hypergraphs are given an attribute static=True.
A C++ addon called [NWHy](docs/build/nwhy.html) can be used in Linux environments to support optimized hypergraph methods such as s-centrality measures.
A JavaScript addon called [Hypernetx-Widget](docs/build/widget.html) can be used to interactively inspect hypergraphs in a Jupyter Notebook.
Four new tutorials highlighting the s-centrality metrics, static Hypergraphs, [NWHy](docs/build/nwhy.html), and [Hypernetx-Widget](docs/build/widget.html).
New Features of Version 1.1
Static Hypergraph refactored to improve performance across all methods.
Added modules and tutorials for Contagion Modeling, Community Detection, Clustering, and Hypergraph Generation.
Cell weights for incidence matrices may be added to static hypergraphs on construction.
New Features of Version 1.2
Added module and tutorial for Modularity and Clustering
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