Natural Gradient Ascent in Evolutionary Games

10/02/2022
by   Vladimir Jaćimović, et al.
0

We study evolutionary games with a continuous trait space in which replicator dynamics are restricted to the manifold of multidimensional Gaussian distributions. We demonstrate that the replicator equations are natural gradient flow for maximization of the mean fitness. Our findings extend previous results on information-geometric aspects of evolutionary games with a finite strategy set. Throughout the paper we exploit the information-geometric approach and the relation between evolutionary dynamics and Natural Evolution Strategies, the concept that has been developed within the framework of black-box optimization. This relation sheds a new light on the replicator dynamics as a compromise between maximization of the mean fitness and preservation of diversity in the population.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/04/2012

Theoretical foundation for CMA-ES from information geometric perspective

This paper explores the theoretical basis of the covariance matrix adapt...
research
11/01/2015

Limiting fitness distributions in evolutionary dynamics

Darwinian evolution can be modeled in general terms as a flow in the spa...
research
12/06/2019

Information-geometric optimization with natural selection

Evolutionary algorithms, inspired by natural evolution, aim to optimize ...
research
09/26/2012

Efficient Natural Evolution Strategies

Efficient Natural Evolution Strategies (eNES) is a novel alternative to ...
research
06/22/2011

Natural Evolution Strategies

This paper presents Natural Evolution Strategies (NES), a recent family ...
research
02/20/2021

Info-Evo: Using Information Geometry to Guide Evolutionary Program Learning

A novel optimization strategy, Info-Evo, is described, in which natural ...
research
11/29/2021

Fitness landscape adaptation in open replicator systems with competition: application to cancer therapy

This study focuses on open quasispecies systems with competition and dea...

Please sign up or login with your details

Forgot password? Click here to reset