Abstract
Artificial Neural Networks have been crowned with tremendous successes in recent years, with ever wider and more complex ranges of applications. However, they, too often, result from a costly human design process relying as much on expertise as on trial and error. While the field of NeuroEvolution provides a complementary view point through emergent, self-designing ANNs, the “black-box” properties of the resulting networks is further magnified. Still, by once more taking inspiration from biology, we may extract meaningful information from ANNs by using similar approaches as those used for biological brains.
In this work, we study the emergence and functional allocation of neurons in a light communication task. By having a robot transmit visual information, through vocal channels, we enrich the existing literature with new types of stimuli, namely those related to role (emitter/ receiver). Through Virtual functional Magnetic Resonance Imaging (VfMRI), we observe that evolution only favored specific kind of input-processing modules. Combined with a strong presence of jack-of-alltrades modules, this demonstrates the balancing act between specialization and generalization in Artificial Neural Networks with emergent topologies.