Population Sizing for Genetic Programming Based Upon Decision Making

02/04/2005
by   K. Sastry, et al.
0

This paper derives a population sizing relationship for genetic programming (GP). Following the population-sizing derivation for genetic algorithms in Goldberg, Deb, and Clark (1992), it considers building block decision making as a key facet. The analysis yields a GP-unique relationship because it has to account for bloat and for the fact that GP solutions often use subsolution multiple times. The population-sizing relationship depends upon tree size, solution complexity, problem difficulty and building block expression probability. The relationship is used to analyze and empirically investigate population sizing for three model GP problems named ORDER, ON-OFF and LOUD. These problems exhibit bloat to differing extents and differ in whether their solutions require the use of a building block multiple times.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/22/2012

Computational Complexity Analysis of Multi-Objective Genetic Programming

The computational complexity analysis of genetic programming (GP) has be...
research
10/07/2021

Solving classification problems using Traceless Genetic Programming

Traceless Genetic Programming (TGP) is a new Genetic Programming (GP) th...
research
04/23/2020

CoInGP: Convolutional Inpainting with Genetic Programming

We investigate the use of Genetic Programming (GP) as a convolutional pr...
research
04/08/2023

A Reinforcement Learning-assisted Genetic Programming Algorithm for Team Formation Problem Considering Person-Job Matching

An efficient team is essential for the company to successfully complete ...
research
02/16/2007

Overcoming Hierarchical Difficulty by Hill-Climbing the Building Block Structure

The Building Block Hypothesis suggests that Genetic Algorithms (GAs) are...
research
05/06/2015

Retaining Experience and Growing Solutions

Generally, when genetic programming (GP) is used for function synthesis ...
research
05/01/2020

It is Time for New Perspectives on How to Fight Bloat in GP

The present and future of evolutionary algorithms depends on the proper ...

Please sign up or login with your details

Forgot password? Click here to reset