Methods For Decreasing The Number Of Objective Evaluations For Independent Computationally Expensive Objective Problems

2008 IEEE CONGRESS ON EVOLUTIONARY COMPUTATION, VOLS 1-8(2008)

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Abstract
In this paper, three new methods for pushing solutions toward a desired region of the objective space more quickly are explored; hypercube distance scaling, dynamic objective thresholding, and hypercube distance objective ordering. These methods are applicable for problems that do not require the entire Pareto front and that require an independent computationally expensive computation for each objective. The performance of these methods is evaluated with the multiple objective 0/1 Knapsack problem.
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Key words
distance scale,knapsack problem,hypercubes,geometry,hafnium,pareto front,evolutionary computation,object recognition,pareto optimization,multidimensional systems,optimization
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