高度多模态健身景观中的停滞检测

IF 0.9 4区 计算机科学 Q4 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Amirhossein Rajabi, Carsten Witt
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引用次数: 0

摘要

停滞检测被认为是随机搜索启发式摆脱局部最优的一种机制,它通过自动增加邻域的大小来找到所谓的间隙大小,也就是到下一个改进点的距离。这种方法的实用性主要体现在简单的多模式景观中,这些景观中的局部最优点很少,而且可以一个接一个地跨越。在间隙大小相似的最优点位置较为复杂的多模态景观中,停滞检测的问题在于邻域大小经常被重置为 1,而不使用过去有希望的间隙大小。在本文中,我们研究了一种名为 "半径记忆 "的新机制,它可以添加到停滞检测中,通过优先使用过去的成功值来更谨慎地控制搜索半径。我们在一个名为 SD-RLS\(^{\text {m}}/)的算法中实现了这一想法,并证明与之前的停滞检测变体相比,它能加快均匀约束下线性函数和最小生成树问题的速度。此外,它的运行时间在单模态函数和跳跃基准的广义化问题上也没有明显恶化。最后,我们介绍了研究 SD-RLS(^{\text {m}})的实验结果,并将其与其他算法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Stagnation Detection in Highly Multimodal Fitness Landscapes

Stagnation Detection in Highly Multimodal Fitness Landscapes

Stagnation detection has been proposed as a mechanism for randomized search heuristics to escape from local optima by automatically increasing the size of the neighborhood to find the so-called gap size, i. e., the distance to the next improvement. Its usefulness has mostly been considered in simple multimodal landscapes with few local optima that could be crossed one after another. In multimodal landscapes with a more complex location of optima of similar gap size, stagnation detection suffers from the fact that the neighborhood size is frequently reset to  1 without using gap sizes that were promising in the past. In this paper, we investigate a new mechanism called radius memory which can be added to stagnation detection to control the search radius more carefully by giving preference to values that were successful in the past. We implement this idea in an algorithm called SD-RLS\(^{\text {m}}\) and show compared to previous variants of stagnation detection that it yields speed-ups for linear functions under uniform constraints and the minimum spanning tree problem. Moreover, its running time does not significantly deteriorate on unimodal functions and a generalization of the Jump benchmark. Finally, we present experimental results carried out to study SD-RLS\(^{\text {m}}\) and compare it with other algorithms.

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来源期刊
Algorithmica
Algorithmica 工程技术-计算机:软件工程
CiteScore
2.80
自引率
9.10%
发文量
158
审稿时长
12 months
期刊介绍: Algorithmica is an international journal which publishes theoretical papers on algorithms that address problems arising in practical areas, and experimental papers of general appeal for practical importance or techniques. The development of algorithms is an integral part of computer science. The increasing complexity and scope of computer applications makes the design of efficient algorithms essential. Algorithmica covers algorithms in applied areas such as: VLSI, distributed computing, parallel processing, automated design, robotics, graphics, data base design, software tools, as well as algorithms in fundamental areas such as sorting, searching, data structures, computational geometry, and linear programming. In addition, the journal features two special sections: Application Experience, presenting findings obtained from applications of theoretical results to practical situations, and Problems, offering short papers presenting problems on selected topics of computer science.
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