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Bayesian Hierarchical Community Discovery

Project description

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pybhcd: Bayesian Hierarchical Community Discovery

PyPI

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

Parameter Tuning

There are five parameters (alpha, beta, lambda, delta, gamma) to be tuned, lines within interval (0,1) and satisifies 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 0.3.post1
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