The detection of community structure in complex networks is an important problem deeply investigated in the last years. In fact, the awareness of network organization allows a better understanding of network properties, which could not be captured when studying the network as a whole. Evolu- tionary computation techniques, including Genetic Algorithms (GAs) and, more recently, Differential Evolution (DE), showed to be competitive techniques for the solution of this problem. In this paper, a new method for community detection based on DE is proposed. The approach employs different mutation and crossover operators, which are chosen at random at each iteration. Moreover, it introduces a self-adaptive strategy that changes part of the population and the scaling factor when the fitness function does not improve for a number of generations. Experiments on real-world and synthetic networks show that the method obtains good performance and it is competitive with respect to other DE-based algorithms.
Self-adaptive Differential Evolution for Community Detection
Pizzuti C;Socievole A
2019
Abstract
The detection of community structure in complex networks is an important problem deeply investigated in the last years. In fact, the awareness of network organization allows a better understanding of network properties, which could not be captured when studying the network as a whole. Evolu- tionary computation techniques, including Genetic Algorithms (GAs) and, more recently, Differential Evolution (DE), showed to be competitive techniques for the solution of this problem. In this paper, a new method for community detection based on DE is proposed. The approach employs different mutation and crossover operators, which are chosen at random at each iteration. Moreover, it introduces a self-adaptive strategy that changes part of the population and the scaling factor when the fitness function does not improve for a number of generations. Experiments on real-world and synthetic networks show that the method obtains good performance and it is competitive with respect to other DE-based algorithms.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.