Studying the effect of using low-discrepancy sequences to initialize population-based optimization algorithms

被引:0
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作者
Mahamed G. H. Omran
Salah al-Sharhan
Ayed Salman
Maurice Clerc
机构
[1] Gulf University for Science and Technology,Department of Computer Science
[2] Kuwait University,Department of Computer Engineering
[3] Independent Consultant,undefined
关键词
Low-discrepancy sequences; Quasi-random sequences; Pseudo-random sequences; Population-based optimization algorithms; Particle swarm optimization; Differential evolution;
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摘要
In this paper, we investigate the use of low-discrepancy sequences to generate an initial population for population-based optimization algorithms. Previous studies have found that low-discrepancy sequences generally improve the performance of a population-based optimization algorithm. However, these studies generally have some major drawbacks like using a small set of biased problems and ignoring the use of non-parametric statistical tests. To address these shortcomings, we have used 19 functions (5 of them quasi-real-world problems), two popular low-discrepancy sequences and two well-known population-based optimization methods. According to our results, there is no evidence that using low-discrepancy sequences improves the performance of population-based search methods.
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页码:457 / 480
页数:23
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