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Improved Crowding Distance for NSGA-II

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arxiv 1811.12667 v1 pith:JVPOKPIA submitted 2018-11-30 cs.NE cs.AI

Improved Crowding Distance for NSGA-II

classification cs.NE cs.AI
keywords crowdingdistancealgorithmfrontnsga-iiparetoproblemsconvergence
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Non-dominated sorting genetic algorithm II (NSGA-II) does well in dealing with multi-objective problems. When evaluating validity of an algorithm for multi-objective problems, two kinds of indices are often considered simultaneously, i.e. the convergence to Pareto Front and the distribution characteristic. The crowding distance in the standard NSGA-II has the property that solutions within a cubic have the same crowding distance, which has no contribution to the convergence of the algorithm. Actually the closer to the Pareto Front a solution is, the higher priority it should have. In the paper, the crowding distance is redefined while keeping almost all the advantages of the original one. Moreover, the speed of converging to the Pareto Front is faster. Finally, the improvement is proved to be effective by applying it to solve nine Benchmark problems.

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