TY - JOUR
T1 - Fragmenting networks by targeting collective influencers at a mesoscopic level
AU - Kobayashi, Teruyoshi
AU - Masuda, Naoki
N1 - Funding Information:
N.M. acknowledges the support provided through JST, CREST, and JST, ERATO, Kawarabayashi Large Graph Project. T.K. acknowledges financial support from the Japan Society for the Promotion of Science KAKENHI Grants no. 25780203, 15H01948, and 16K03551. We thank Flaviano Morone and Taro Takaguchi for providing codes for the CI algorithm.
Publisher Copyright:
© The Author(s) 2016.
PY - 2016/11/25
Y1 - 2016/11/25
N2 - A practical approach to protecting networks against epidemic processes such as spreading of infectious diseases, malware, and harmful viral information is to remove some influential nodes beforehand to fragment the network into small components. Because determining the optimal order to remove nodes is a computationally hard problem, various approximate algorithms have been proposed to efficiently fragment networks by sequential node removal. Morone and Makse proposed an algorithm employing the non-backtracking matrix of given networks, which outperforms various existing algorithms. In fact, many empirical networks have community structure, compromising the assumption of local tree-like structure on which the original algorithm is based. We develop an immunization algorithm by synergistically combining the Morone-Makse algorithm and coarse graining of the network in which we regard a community as a supernode. In this way, we aim to identify nodes that connect different communities at a reasonable computational cost. The proposed algorithm works more efficiently than the Morone-Makse and other algorithms on networks with community structure.
AB - A practical approach to protecting networks against epidemic processes such as spreading of infectious diseases, malware, and harmful viral information is to remove some influential nodes beforehand to fragment the network into small components. Because determining the optimal order to remove nodes is a computationally hard problem, various approximate algorithms have been proposed to efficiently fragment networks by sequential node removal. Morone and Makse proposed an algorithm employing the non-backtracking matrix of given networks, which outperforms various existing algorithms. In fact, many empirical networks have community structure, compromising the assumption of local tree-like structure on which the original algorithm is based. We develop an immunization algorithm by synergistically combining the Morone-Makse algorithm and coarse graining of the network in which we regard a community as a supernode. In this way, we aim to identify nodes that connect different communities at a reasonable computational cost. The proposed algorithm works more efficiently than the Morone-Makse and other algorithms on networks with community structure.
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U2 - 10.1038/srep37778
DO - 10.1038/srep37778
M3 - Article
AN - SCOPUS:84998893224
SN - 2045-2322
VL - 6
JO - Scientific reports
JF - Scientific reports
M1 - 37778
ER -