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  4. On the benchmarking of multiobjective optimization algorithm
 
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2003
Conference Paper
Title

On the benchmarking of multiobjective optimization algorithm

Abstract
The "No Free Lunch" (NFL) theorems state that in average each algorithm has the same performance, when no a priori knowledge of single-objective cost function f is assumed. This paper extends the NFL theorems to the case of multi-objective optimization. Further it is shown that even in cases of a priori knowledge, when the performance measure is related to the set of extrema points sampled so far, the NFL theorems still hold. However, a procedure for obtaining function-dependent algorithm performance can be constructed, the so-called tournament performance, which is able to gain different performance measures for different multiobjective algorithms.
Author(s)
Köppen, M.
Mainwork
Knowledge-based intelligent information and engineering systems. Pt.1  
Conference
International Conference on Knowledge-Based Intelligent Information and Engineering Systems (KES) 2003  
Language
English
Fraunhofer-Institut für Produktionsanlagen und Konstruktionstechnik IPK  
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