Article ID Journal Published Year Pages File Type
384696 Expert Systems with Applications 2013 9 Pages PDF
Abstract

A general method to reduce computing time for large combinatorial optimization problems by the use of a novel proposal is presented. It is based on reducing the problem complexity by the systematic application of vaccines, it is inspired in the concept of immunization derived from Artificial Immune Systems. The method can be applied practically to any combinatorial problem program solver such as genetic algorithms, memetic algorithms, artificial immune systems, ant colony optimization, the Dantzig–Fulkerson–Johnson algorithm, etc., providing optimal and suboptimal routes outperforming the selected algorithm itself. As a direct consequence of reducing problem complexity, the method provides a means to bring combinatorial optimization open problems that are too big to be treated by known techniques to a tractable point where acceptable solutions can be obtained. To demonstrate the proposed methodology the Traveling Salesman Problem for huge quantity of cities was used, we tested the method with modern evolutionary algorithms and the Concorde program. Comparative experiments that shows the effectiveness of the method are presented.

► We present a novel general method to reduce computing time for large COPs. ► The method can be applied practically to any existing COP solver. ► Optimization results of very large TSP are presented. ► The method could help to provide a solution of COPs with unknown solution.

Related Topics
Physical Sciences and Engineering Computer Science Artificial Intelligence
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