Article ID Journal Published Year Pages File Type
382793 Expert Systems with Applications 2014 15 Pages PDF
Abstract

•Two ranking-based selection methods are proposed to enhance the IWD algorithm.•The proposed methods have been evaluated using three benchmark optimization tasks.•The exponential ranking method is effective in enhancing the IWD performance.•The computational requirements of the proposed methods need further investigation.

The Intelligent Water Drop (IWD) algorithm is a recent stochastic swarm-based method that is useful for solving combinatorial and function optimization problems. In this paper, we investigate the effectiveness of the selection method in the solution construction phase of the IWD algorithm. Instead of the fitness proportionate selection method in the original IWD algorithm, two ranking-based selection methods, namely linear ranking and exponential ranking, are proposed. Both ranking-based selection methods aim to solve the identified limitations of the fitness proportionate selection method as well as to enable the IWD algorithm to escape from local optima and ensure its search diversity. To evaluate the usefulness of the proposed ranking-based selection methods, a series of experiments pertaining to three combinatorial optimization problems, i.e., rough set feature subset selection, multiple knapsack and travelling salesman problems, is conducted. The results demonstrate that the exponential ranking selection method is able to preserve the search diversity, therefore improving the performance of the IWD algorithm.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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