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CSU Lecture Forum

Title

Many-Objective   Evolutionary Algorithms for Optimization

Lecturer

Gary G. YenIEEE FellowIET Fellow, Oklahoma State University

Time

Jan 11, 2016, 15:00

Add

Auditorium, Democratic Building, Main   Campus

Biography

Evolutionary computation is the study of   biologically motivated computational paradigms which exert novel ideas and   inspiration from natural evolution and adaptation. The applications of   population-based heuristics and nature-inspired metaphors in solving   multiobjective optimization problems have been receiving a growing   attention.  To search for a family of Pareto optimal solutions,   Evolutionary Multiobjective Optimization Algorithms have been successfully   exploited to solve optimization problems in which the fitness measures and   even constraints could be uncertain and varied over time.  When encounter optimization problems with many   objectives, nearly all designs performs poorly because of loss of selection   pressure in fitness evaluation solely based upon Pareto optimality principle. This talk will survey recently   published literature along this line of research- evolutionary algorithm for   many-objective optimization and its real-world applications.  Specifically, selection strategy,   including mating selection and environmental selection, is a key ingredient   in the design of evolutionary many-objective optimization algorithms.    We will provide a comprehensive analysis on the selection strategies in the   current evolutionary many-objective optimization algorithms.    Experimental results on scalable DTLZ and WFG benchmark functions will   demonstrate the pros and cons of various designs in terms of chosen   performance metrics designed specifically for many-objective optimization. Based on performance metrics ensemble, we   will provide a comprehensive   measure among all competitors and more importantly reveal insight pertaining   to specific problem characteristics that each evolutionary many-objective   optimization algorithm could perform the best. The experimental results   confirm the finding from the No Free Lunch theorem that any algorithm’s   elevated performance over one class of problems is exactly paid for in loss   over another class.

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