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Investigating Smart Sampling as a population initialization method for Differential Evolution in continuous problems

Authors :
de Melo, Vinícius Veloso
Botazzo Delbem, Alexandre Cláudio
Source :
Information Sciences. Jun2012, Vol. 193, p36-53. 18p.
Publication Year :
2012

Abstract

Abstract: Recently, researches have shown that the performance of metaheuristics can be affected by population initialization. Opposition-based Differential Evolution (ODE), Quasi-Oppositional Differential Evolution (QODE), and Uniform-Quasi-Opposition Differential Evolution (UQODE) are three state-of-the-art methods that improve the performance of the Differential Evolution algorithm based on population initialization and different search strategies. In a different approach to achieve similar results, this paper presents a technique to discover promising regions in a continuous search-space of an optimization problem. Using machine-learning techniques, the algorithm named Smart Sampling (SS) finds regions with high possibility of containing a global optimum. Next, a metaheuristic can be initialized inside each region to find that optimum. SS and DE were combined (originating the SSDE algorithm) to evaluate our approach, and experiments were conducted in the same set of benchmark functions used by ODE, QODE and UQODE authors. Results have shown that the total number of function evaluations required by DE to reach the global optimum can be significantly reduced and that the success rate improves if SS is employed first. Such results are also in consonance with results from the literature, stating the importance of an adequate starting population. Moreover, SS presents better efficacy to find initial populations of superior quality when compared to the other three algorithms that employ oppositional learning. Finally and most important, the SS performance in finding promising regions is independent of the employed metaheuristic with which SS is combined, making SS suitable to improve the performance of a large variety of optimization techniques. [Copyright &y& Elsevier]

Details

Language :
English
ISSN :
00200255
Volume :
193
Database :
Academic Search Index
Journal :
Information Sciences
Publication Type :
Periodical
Accession number :
73339542
Full Text :
https://doi.org/10.1016/j.ins.2011.12.037