Title of article :
Runtime analysis of a multi-objective evolutionary algorithm for obtaining finite approximations of Pareto fronts
Author/Authors :
Yu Chen، نويسنده , , Xiufen Zou، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2014
Pages :
16
From page :
62
To page :
77
Abstract :
Previous theoretical analyses of evolutionary multi-objective optimization (EMO) mostly focus on obtaining image-approximations of Pareto fronts. However, in practical applications, an appropriate value of image is critical but sometimes, for a multi-objective optimization problem (MOP) with unknown attributes, difficult to determine. In this paper, we propose a new definition for the finite representation of the Pareto front—the adaptive Pareto front, which can automatically accommodate the Pareto front. Accordingly, it is more practical to take the adaptive Pareto front, or its image-approximation (termed the image-adaptive Pareto front) as the goal of an EMO algorithm. We then perform a runtime analysis of a (image) multi-objective evolutionary algorithm ((image) MOEA) for three MOPs, including a discrete MOP with a polynomial Pareto front (denoted as a polynomial DMOP), a discrete MOP with an exponential Pareto front (denoted as an exponential DMOP) and a simple continuous two-objective optimization problem (SCTOP). By employing an estimator-based update strategy in the (image) MOEA, we show that (1) for the polynomial DMOP, the whole Pareto front can be obtained in the expected polynomial runtime by setting the population size image equal to the number of Pareto vectors; (2) for the exponential DMOP, the expected polynomial runtime can be obtained by keeping image increasing in the same order as that of the problem size n; and (3) the diversity mechanism guarantees that in the expected polynomial runtime the MOEA can obtain an image-adaptive Pareto front of SCTOP for any given precision image. Theoretical studies and numerical comparisons with NSGA-II demonstrate the efficiency of the proposed MOEA and should be viewed as an important step toward understanding the mechanisms of MOEAs.
Keywords :
runtime analysis , Finite approximations of Pareto fronts , Multi-objective evolutionary algorithm
Journal title :
Information Sciences
Serial Year :
2014
Journal title :
Information Sciences
Record number :
1216040
Link To Document :
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