BLSM - Bayesian Latent Space Model
Provides a Bayesian latent space model for complex
networks, either weighted or unweighted. Given an observed
input graph, the estimates for the latent coordinates of the
nodes are obtained through a Bayesian MCMC algorithm. The
overall likelihood of the graph depends on a fundamental
probability equation, which is defined so that ties are more
likely to exist between nodes whose latent space coordinates
are close. The package is mainly based on the model by Hoff,
Raftery and Handcock (2002) <doi:10.1198/016214502388618906>
and contains some extra features (e.g., removal of the
Procrustean step, weights implemented as coefficients of the
latent distances, 3D plots). The original code related to the
above model was retrieved from
<https://www.stat.washington.edu/people/pdhoff/Code/hoff_raftery_handcock_2002_jasa/>.
Users can inspect the MCMC simulation, create and customize
insightful graphical representations or apply clustering
techniques.