greed - Clustering and Model Selection with the Integrated
Classification Likelihood
An ensemble of algorithms that enable the clustering of
networks and data matrices (such as counts, categorical or
continuous) with different type of generative models. Model
selection and clustering is performed in combination by
optimizing the Integrated Classification Likelihood (which is
equivalent to minimizing the description length). Several
models are available such as: Stochastic Block Model, degree
corrected Stochastic Block Model, Mixtures of Multinomial,
Latent Block Model. The optimization is performed thanks to a
combination of greedy local search and a genetic algorithm (see
<arXiv:2002:11577> for more details).