Title :
Partial structure learning by subset walsh transform
Author :
Christie, Lee A. ; Lonie, David P. ; McCall, John A. W.
Author_Institution :
IDEAS Res. Inst., Robert Gordon Univ., Aberdeen, UK
Abstract :
Estimation of distribution algorithms (EDAs) use structure learning to build a statistical model of good solutions discovered so far, in an effort to discover better solutions. The non-zero coefficients of the Walsh transform produce a hypergraph representation of structure of a binary fitness function; however, computation of all Walsh coefficients requires exhaustive evaluation of the search space. In this paper, we propose a stochastic method of determining Walsh coefficients for hyperedges contained within the selected subset of the variables (complete local structure). This method also detects parts of hyperedges which cut the boundary of the selected variable set (partial structure), which may be used to incrementally build an approximation of the problem hypergraph.
Keywords :
Walsh functions; distributed algorithms; graph theory; set theory; stochastic processes; transforms; EDA; Walsh coefficients; binary fitness function; estimation of distribution algorithms; hyperedges; hypergraph representation; nonzero coefficients; partial structure learning; statistical model; stochastic method; structure learning; subset Walsh transform; variable subset; Computational modeling; Educational institutions; Equations; Estimation; Standards; Symmetric matrices; Transforms;
Conference_Titel :
Computational Intelligence (UKCI), 2013 13th UK Workshop on
Conference_Location :
Guildford
Print_ISBN :
978-1-4799-1566-8
DOI :
10.1109/UKCI.2013.6651297