Created by W.Langdon from gp-bibliography.bib Revision:1.8010
This thesis provides a comprehensive description of all the bloat theories proposed so far, and a detailed taxonomy of available bloat control methods. Then it proposes two novel bloat control approaches, Dynamic Limits and Resource-Limited GP, both implemented on the GPLAB software package, also developed in the context of this thesis. Dynamic Limits restricts the size or depth allowed at the individual level, while Resource-Limited GP imposes restrictions only at the population level, regardless of the particularities of the individuals within. Four different problems were used as a benchmark to study the efficiency of both Dynamic Limits and Resource-Limited GP. They represent a varied selection of problems in terms of bloat dynamics and response to different bloat control techniques: Symbolic Regression of the quartic polynomial, Artificial Ant on the Santa Fe food trail, 5-Bit Even Parity, and 11-Bit Boolean Multiplexer. The results of exhaustive experiments have shown that, although Dynamic Limits was a more efficient bloat control method than Resource-Limited GP across the set of problems studied, both approaches successfully performed the task they were designed to. Without adding any parameters to the search process, it was possible to match the performance of some of the best state-of-the-art methods available so far.",
Genetic Programming entries for Sara Silva