Complexity-based speciation and genotype representation for neuroevolution

10/11/2020
by   Alexander Hadjiivanov, et al.
0

This paper introduces a speciation principle for neuroevolution where evolving networks are grouped into species based on the number of hidden neurons, which is indicative of the complexity of the search space. This speciation principle is indivisibly coupled with a novel genotype representation which is characterised by zero genome redundancy, high resilience to bloat, explicit marking of recurrent connections, as well as an efficient and reproducible stack-based evaluation procedure for networks with arbitrary topology. Furthermore, the proposed speciation principle is employed in several techniques designed to promote and preserve diversity within species and in the ecosystem as a whole. The competitive performance of the proposed framework, named Cortex, is demonstrated through experiments. A highly customisable software platform which implements the concepts proposed in this study is also introduced in the hope that it will serve as a useful and reliable tool for experimentation in the field of neuroevolution.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/03/2022

Zero-Shot Bird Species Recognition by Learning from Field Guides

We exploit field guides to learn bird species recognition, in particular...
research
12/21/2020

Evolving the Behavior of Machines: From Micro to Macroevolution

Evolution gave rise to creatures that are arguably more sophisticated th...
research
01/23/2017

Comparative study on supervised learning methods for identifying phytoplankton species

Phytoplankton plays an important role in marine ecosystem. It is defined...
research
02/07/2019

Conv-codes: Audio Hashing For Bird Species Classification

In this work, we propose a supervised, convex representation based audio...
research
03/12/2022

The Principle of Diversity: Training Stronger Vision Transformers Calls for Reducing All Levels of Redundancy

Vision transformers (ViTs) have gained increasing popularity as they are...

Please sign up or login with your details

Forgot password? Click here to reset