NeuroEvolution of Augmenting Topologies

NeuroEvolution of Augmenting Topologies or NEAT is often described as a genetic solution for improving neural networks. The NEAT concept can be used to provide a new model for selecting typologies for a neural network and for initializing weights.


The idea with NEAT is that networks start small and simple, and then complexify as they evolve. Specifically, NEAT alters the weighting parameters and the network structure, and uses the principle of species evolution to promote innovation in the process.
Experts point out that as an automation procedure, NEAT provides a radically new way of defining topology, since traditionally, engineers who utilized a particular topology in the network simply learned about input weights through training data.

Post a Comment

0 Comments