Title :
An iterative mutual information histogram technique for linkage learning in evolutionary algorithms
Author_Institution :
Fac. of Comput., Eng. & Math. Sci., West of England Univ., Bristol, UK
Abstract :
This paper introduces a new algorithm for determining the appropriate linkage between variables for an evolutionary algorithm. It operates in an iterative mode, as a pre-processing step before the evolutionary algorithm is run. The technique works by estimating the mutual information between variables, based on truncation-selected groups from random populations. To check for significance of differences between mutual information values, histograms are used, along with the standard, minimum error thresholding procedure. A stopping criterion is easily constructed, based on the functional form of the distribution of zero mutual information estimates. The technique is illustrated on a variety of problems, and shown to have polynomial time complexity for bounded deception. The technique´s extension to alphabets of arbitrary cardinality is straightforward, and approximate techniques for real-valued algorithms are discussed. Given its efficacy and extensibility, the technique could prove a useful alternative to other linkage learning techniques.
Keywords :
computational complexity; evolutionary computation; learning (artificial intelligence); evolutionary algorithms; iterative mutual information histogram; linkage learning; time complexity; Bayesian methods; Couplings; Evolutionary computation; Histograms; Interleaved codes; Iterative algorithms; Mutual information; Polynomials; Scalability; Size measurement;
Conference_Titel :
Evolutionary Computation, 2005. The 2005 IEEE Congress on
Print_ISBN :
0-7803-9363-5
DOI :
10.1109/CEC.2005.1554963