Detecting Communities in Networks: a Decentralized Approach Based on Multiagent Reinforcement Learning (2020)

Abstract An important problem in network science is finding relevant community structures in complex networks. A community structure is a partition of the network nodes into clusters or modules, such that each cluster is densely connected. Current community detection algorithms have time complexity, centralization, and scalability issues. In this paper, to solve this problem,…

Network motifs: A key variable in the equation of dynamic flow between macro and micro layers in Complex Networks (2021)

Abstract Complex Networks theory represents a powerful tool to model real-world systems as graphs with non-trivial topological features. Static by their definition, complex networks are limited to be the reflection or the snapshot of the dynamical systems they encode in a given moment. Frankly, studies show that the network preserves the characteristics of the…

An empirical analysis of the correlation between the motifs frequency and the topological properties of complex networks (2019)

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…