Effects of Population Size on Selection and Scalability in Evolutionary Many-Objective Optimization
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چکیده
In this work we study population size as a fraction of the true Pareto optimal set and analyze its effects on selection and performance scalability of a conventional multi-objective evolutionary algorithm applied to many-objective optimization of small MNK-landscapes.
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تاریخ انتشار 2013