Supporting Information S1 Finding statistically significant communities in networks
نویسندگان
چکیده
The assessment of a cluster’s significance given the null (configuration) model relies on the estimation of the probability described in Eq. 1 of the main text. This function has to be evaluated many times along the execution of OSLOM in order to clean up each cluster and to evaluate the clusters at the different hierarchical levels. We explain here how the values of the distribution function can be estimated or approximated in a practical implementation of OSLOM. For convenience, we rewrite the equation here
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