• Corpus ID: 18887795

A Friendly Introduction to RGP

@inproceedings{Flasch2014AFI,
  title={A Friendly Introduction to RGP},
  author={Oliver Flasch},
  year={2014}
}
RGP is genetic programming system based on, as well as fully integrated into, the R environment. The system implements classical tree-based genetic programming as well as other variants including, for example, strongly typed genetic programming and Pareto genetic programming. It strives for high modularity through a consistent architecture that allows the customization and replacement of every algorithm component, while maintaining accessibility for new users by adhering to the ”convention over… 

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