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MATLAB code for the CbCI algorithm, an immunization algorithm for networks with community structure. It requires a data file for the community structure, which should be N (= #nodes) by 1 vector of community IDs. If you do not have a data for the community structure, you need to run a community detection algorithm using an external code. After that, Matlab function “getComstr.m” will convert the output file generated by the external code to Matlab vector “Comstr”, a N by 1 vector of community IDs.
{"references": ["T. Kobayashi and N. Masuda, \"Fragmenting networks by targeting collective influencers at a mesoscopic level\", Scientific Reports 6, 37778, 2016."]}
MATLAB, Immunization, Community structure
MATLAB, Immunization, Community structure
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