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Bayesian Hierarchical Community Discovery

Project description

Travis Appveyor

CircleCI

pybhcd: Bayesian Hierarchical Community Discovery

PyPI

An efficient Bayesian nonparametric model for discovering hierarchical community structure in social networks.

This repository is a Python-binding of bhcd.

Parameter Tuning

There are five parameters (alpha, beta, lambda, delta, gamma) to be tuned, lines within interval (0,1) and satisfies the following constraint.

alpha > beta lambda > delta

Build

For Windows, you can use vcpkg to install the dependencies.

Project details


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Files for pybhcd, version 0.5.post1
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