2.8 Network Motif

The clustering property and hierarchical modularity indicates the organization of modules in real-world networks. However, the question is: How do we find such modules (building blocks) from real-world networks? Milo et al. [30] proposed a detection method for such modules.

It is expected that the modules and building blocks are not randomly constructed; thus, such modules are frequently observed to be more than those in random networks. For this reason, such subnetworks are referred to as “network motifs” [30,31]. Employing the above difference between real-world networks and random networks, we may find the modules.

This detection method focuses on the appearance frequencies of a given subnetwork (i.e., subgraph) in a real network and random networks, that is, Freal and Frand, respectively. Random networks are generated from the real network by the randomization method, in which the terminals of two randomly selected edges are mutually exchanged at each time step: when the connected node pairs (i, j) and (m, n) are selected, we delete these edges and generate the newly connected pairs (i, n) and (m, j) (see Ref. [30] for details). We obtain the average imgFrandimg and the standard deviation SD for Frand from many randomized networks generated by the above procedure. The ...

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