Abstract:
The article examines the possibility of using an evolutionary approach to improve implementation of
neural networks and self-learning mechanisms for solving problems based on multi-agent representation
of knowledge. The collective use of artificial neural networks as a neural network of agents can further
parallelize and distribute between local agents the processes of solving complex intellectual tasks. The
algorithms of integrated evolutionary search of the weights to solve a number of learning objectives are
described. We propose a genetic algorithm, generating neural network model of optimal topology. In the
present genetic algorithm each individual represents a separate neural network, and the population is
considered as an evolving multi-agent system in which the strategy of behavior of each agent is determined by its corresponding neural network.