Title :
Multi Population Pattern Searching Algorithm: A New Evolutionary Method Based on the Idea of Messy Genetic Algorithm
Author :
Kwasnicka, Halina ; Przewozniczek, Michal
Author_Institution :
Wroclaw Univ. of Technol., Wroclaw, Poland
Abstract :
One of the main evolutionary algorithms bottlenecks is the significant effectiveness dropdown caused by increasing number of genes necessary for coding the problem solution. In this paper, we present a multi population pattern searching algorithm (MuPPetS), which is supposed to be an answer to situations where long coded individuals are a must. MuPPetS uses some of the messy GA ideas like coding and operators. The presented algorithm uses the binary coding, however the objective is to use MuPPetS against real-life problems, whatever coding schema. The main novelty in the proposed algorithm is a gene pattern idea based on retrieving, and using knowledge of gene groups which contains genes highly dependent on each other. Thanks to gene patterns the effectiveness of data exchange between population individuals improves, and the algorithm gains new, interesting, and beneficial features like a kind of “selective attention” effect.
Keywords :
binary codes; data handling; data structures; genetic algorithms; search problems; MuPPetS; binary coding schema; data exchange; evolutionary algorithm; evolutionary method; gene group; gene pattern idea; messy GA idea; messy genetic algorithm; multipopulation pattern searching algorithm; population individual; real-life problem; Bayesian methods; Biological cells; Couplings; Data structures; Encoding; Genetic algorithms; Viruses (medical); Bayesian optimization algorithm (BOA); deceptive functions; evolutionary algorithms; gene patterns; linkage learning; messy GA;
Journal_Title :
Evolutionary Computation, IEEE Transactions on
DOI :
10.1109/TEVC.2010.2102038