An empirical analysis of the correlation between the motifs frequency and the topological properties of complex networks

Abstract Complex networks are data structures with great importance in representing real world interactions which surrounds us. While their structures might look chaotic at a first glance, the focus of most on-going studies in this field is in understanding how their topological properties influence the dynamics of a complex network’s structure in order to prove a possible order in the apparent chaos that they display. Based on the evidence found in our previous studies, which revealed a significant correlation between the existence of articulation points and meso-level components such as network motifs, this paper tries to extend this study by presenting analytical research between a consistent set of micro-level topological properties from Graph and Complex Networks Theory and the appearance of the motifs. The purpose of this study is to use network properties to provide a better understanding of how and why network motifs appear, a further step toward the goal of proposing a generator model for networks with specific concentrations of motifs.

[1]  Lei Zhang,et al.  Online Social Networks Based on Complex Network Theory and Simulation Analysis , 2015 .

[2]  G. Xavier,et al.  Exposure of Neonatal Mice to Tobacco Smoke Disturbs Synaptic Proteins and Spatial Learning and Memory from Late Infancy to Early Adulthood , 2015, PloS one.

[3]  Beom Jun Kim Geographical coarse graining of complex networks. , 2004, Physical review letters.

[4]  Ruoming Jin,et al.  Axiomatic ranking of network role similarity , 2011, KDD.

[5]  Darko Striga,et al.  Benford’s Law and Dunbar’s Number: Does Facebook Have a Power to Change Natural and Anthropological Laws? , 2018, IEEE Access.

[6]  John A. Robinson Beta-hairpin peptidomimetics: design, structures and biological activities. , 2008, Accounts of chemical research.

[7]  Jérôme Kunegis,et al.  Preferential attachment in online networks: measurement and explanations , 2013, WebSci.

[8]  Marguerite R. Hertz,et al.  Harrower-Erickson, M.R. and Steiner, M.E., Large Scale Rorschach Techniques, A Manual for the Group Rorschach and Multiple Choice Test. Springfield, Illinois, Charles C. Thomas, 1945 , 1945 .

[9]  Piet Van Mieghem,et al.  Assortativity in complex networks , 2015, J. Complex Networks.

[10]  Massimo Marchiori,et al.  Micro-Macro Analysis of Complex Networks , 2015, PloS one.

[11]  S. Shen-Orr,et al.  Network motifs: simple building blocks of complex networks. , 2002, Science.

[12]  Danai Koutra,et al.  RolX: structural role extraction & mining in large graphs , 2012, KDD.