IEEE Member-only icon How to Cope with an Increasing Number of Objectives in Optimization - Xin Yao - WCCI 2016 How to Cope with an Increasing Number of Objectives in Optimization - Xin Yao - WCCI 2016

How to Cope with an Increasing Number of Objectives in Optimization - Xin Yao - WCCI 2016

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#Multiobjectives optimization #IEEE CIS #CIS #conference #WCCI #2016

Many-objective optimization problems (ManyOPs) pose challenges to existing multi-objective evolutionary algorithms (MOEAs) in terms of convergence, diversity, and computational complexity. This talk presents a personal view towards various strategies and methods for coping with many objectives, from simple ideas of more efficient non-dominated sorting and nonlinear dimensionality reduction, to other simple ideas of a two-archive algorithm (i.e., Two_Arch2), which use two separate archives to focus on convergence and diversity, respectively. Different selection principles (indicator-based and Pareto-based) are used in the two archives. A new Lp-norm based diversity maintenance scheme is introduced. Our experimental results show that Two_Arch2 can cope with ManyOPs (up to 20 objectives) with satisfactory convergence, diversity, and complexity.

Many-objective optimization problems (ManyOPs) pose challenges to existing multi-objective evolutionary algorithms (MOEAs) in terms of convergence, diversity, and computational complexity. This talk presents a personal view towards various strategies and methods for coping with many objectives.

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