Published May 4, 2023 | Version v1
Dataset Open

Challenges of ELA-based Function Evolution using Genetic Programming - Reproducability files

  • 1. BMW Group
  • 2. Leiden University
  • 3. Sorbonne University
  • 4. University of Applied Sciences Upper Austria

Description

This repository contains the data and code for the paper "Challenges of ELA-based Function Evolution using Genetic
Programming"

 

This repository consists of separated folders, which contain the following data:

## Code:

This is the main code used to run the GP functions. The main executable is 'main_gp.py', which executes a single run of the GP system (based on the passed-in argument, which is an index from 0-71 in our experiments).

The data for the BBOB functions are generated using the 'preliminary' folder and the 'get_ela_preliminary.py' file.

 

## Data_GP:

This contains the full logs from each GP run, separated by target function and dimension.

 

## data_random_func:

This contains the same kind of data but for the Random Function Generator.

 

## Reproducibility:

This contains all code used to analyse and visualize the resulting data. The notebook is structured in the same way as the paper, separated by figure.

Files

Code.zip

Files (732.7 MB)

Name Size Download all
md5:08b222958af60775856f2bd75b514953
16.1 MB Preview Download
md5:4af9804bb3bfc9c4243727e26fae36e7
191.3 MB Preview Download
md5:4c4e2787e7329d3330d26931b3fb7e48
27.1 MB Preview Download
md5:c032c4da77d97a56ffa9e1b184052835
495.3 MB Preview Download
md5:306739c5f21e1b0648fb76311afb9ff0
2.9 MB Preview Download