Title :
Gene Regulatory Network Evolution Through Augmenting Topologies
Author :
Cussat-Blanc, Sylvain ; Harrington, Kyle ; Pollack, Jordan
Author_Institution :
Univ. of Toulouse, Toulouse, France
Abstract :
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to control various kinds of agents, from the cells in developmental models to embodied robot swarms. Most recent work uses a genetic algorithm (GA) or an evolution strategy in order to optimize the network for a specific task. However, the empirical performances of these algorithms are unsatisfactory. This paper presents an algorithm that primarily exploits a network distance metric, which allows genetic similarity to be used for speciation and variation of GRNs. This algorithm, inspired by the successful neuroevolution of augmenting topologies algorithm´s use in evolving neural networks and compositional pattern-producing networks, is based on a specific initialization method, a crossover operator based on gene alignment, and speciation based upon GRN structures. We demonstrate the effectiveness of this new algorithm by comparing our approach both to a standard GA and to evolutionary programming on four different experiments from three distinct problem domains, where the proposed algorithm excels on all experiments.
Keywords :
biology computing; genetics; molecular biophysics; GA; GRN; compositional pattern-producing networks; crossover operator; evolution strategy; evolving neural networks; gene alignment; gene regulatory network evolution; gene topology augmentation; genetic algorithm; genetic similarity; initialization method; neuroevolution; Bioinformatics; Computational modeling; Genomics; Proteins; Sensors; Sociology; Evolution; Gene Regulatory Networks; Genetic Algorithm; Speciation; gene regulatory networks (GRNs); genetic algorithm (GA); speciation;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2015.2396199