26 Sep
2018
26 Sep
'18
12:43 p.m.
Dear all, I am a bit confused about the use of the weighted network models for a weight prediction task; Suppose we have a weighted network where edges are integers. We fit a SBM with a Poisson kernel as follows: |data = gt.load_graph(...) # The adjacency matrix has integer entries, and weights greater than zero are stored in data.ep.weights. state = gt.inference.minimize_blockmodel(data, B_min=10, B_max=10, state_args= {'recs':[data.ep.weights], 'rec_types' : ["discrete-poisson"]}) | My question, is how can we obtain, from |state|, a point estimate of the Poisson parameters in order to compute the distribution of the weights between pairs of nodes. Regards, Adrien Dulac