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Global search in single-solution-based metaheuristics

机译:全球搜索single-solution-basedmetaheuristics

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Purpose Metaheuristic algorithms are classified into two categories namely: single-solution and population-based algorithms. Single-solution algorithms perform local search process by employing a single candidate solution trying to improve this solution in its neighborhood. In contrast, population-based algorithms guide the search process by maintaining multiple solutions located in different points of search space. However, the main drawback of single-solution algorithms is that the global optimum may not reach and it may get stuck in local optimum. On the other hand, population-based algorithms with several starting points that maintain the diversity of the solutions globally in the search space and results are of better exploration during the search process. In this paper more chance of finding global optimum is provided for single-solution-based algorithms by searching different regions of the search space. Design/methodology/approach In this method, different starting points in initial step, searching locally in neighborhood of each solution, construct a global search in search space for the single-solution algorithm. Findings The proposed method was tested based on three single-solution algorithms involving hill-climbing (HC), simulated annealing (SA) and tabu search (TS) algorithms when they were applied on 25 benchmark test functions. The results of the basic version of these algorithms were then compared with the same algorithms integrated with the global search proposed in this paper. The statistical analysis of the results proves outperforming of the proposed method. Finally, 18 benchmark feature selection problems were used to test the algorithms and were compared with recent methods proposed in the literature. Originality/value In this paper more chance of finding global optimum is provided for single-solution-based algorithms by searching different regions of the search space.
机译:目的Metaheuristic算法进行分类分为两类即:单一的解决方案以人群为基础的算法。算法执行本地搜索过程雇佣一名候选人试图解决方案改善社区这个解决方案。指导之下,以人群为基础的算法搜索过程维护多个解决方案位于不同的点的搜索空间。然而,单一的解决方案的主要缺点算法是全球最佳可能不是它可能会陷入局部最优。另一方面,以人群为基础的算法几个不同的起点,保持多样性的解决方案在全球范围内搜索空间和更好的探索的结果在搜索过程中。提供的机会找到全局最优single-solution-based算法通过搜索不同地区的搜索空间。设计/方法/方法,在这种方法中,不同的起点在初始步骤中,搜索本地附近的解决方案,构建一个全球搜索在搜索空间算法单一的解决方案。该方法基于三个测试单一的解决方案涉及的算法爬山(HC)、模拟退火(SA)和当他们禁忌搜索(TS)算法应用25日基准测试函数。这些算法的基本版本的结果与相同的算法吗结合全球搜索建议这篇论文。结果证明了提出的超越方法。被用来测试算法和问题与最近的方法提出了吗文学。提供的机会找到全局最优single-solution-based算法通过搜索不同地区的搜索空间。

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