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A Collaborative Beetle Antennae Search Algorithm Using Memory Based Adaptive Learning

机译:一种使用基于存储器的自适应学习的协作甲壳虫天线搜索算法

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摘要

Recently developed Beetle Antennae Search algorithm (BAS) mimics the odor sensing mechanism of the longhorn beetles. The beetles have many species and many of these are advantageous to the nature as well as the mankind. Excepting the odor sensing activity, the beetles are naturally strong insects, and some of them have storage memory for adaptive learning and showcase social behavior. These natural mechanisms make them intelligent enough to perform the routine tasks for existence. This article proposes a novel Storage (Memory) Adaptive Collaborative BAS (SACBAS) algorithm, which incorporates the memory stored adaptive learning. This helps exploit the Group Extreme Value (GEV) instead of the Individual Extreme Values in swarm for faster convergence. Further, the SACBAS uses the reference points based on non-dominated sorting to diversify the state space. To test the data-driven performance of SACBAS, the Support Vector Machine (SVM) algorithm with linear kernel is used in this study. First, the SACBAS algorithm is tested on the multi-objective ZDT and DTLZ test-suites and compared with two recent techniques, the reference points based Non-dominated Sorting Genetic Algorithm (NSGA III) and Multi-Objective Evolutionary Algorithm based on Decomposition (MOEA/D). Second, the data-driven SACBAS is tested with real-world cases based on offline data. The proposed SACBAS is shown to handle the offline data efficiently and obtains promising results. The Friedman Test is carried out to differentiate the SACBAS from other two techniques and the Post Hoc Test confirms that the SACBAS obtains better HyperVolume indicator scores and outperforms the NSGA III and MOEA/D.
机译:最近开发的甲壳虫天线搜索算法(BAS)模仿长角甲虫甲虫的气味传感机制。甲虫有许多物种,其中许多是对自然和人类的有利。除了气味传感活动外,甲虫是天然强烈的昆虫,其中一些有用于自适应学习和展示社会行为的存储记忆。这些自然机制使其智能足以执行存在的例行任务。本文提出了一种新颖的存储(内存)自适应协作BAS(SACBAS)算法,其包含存储的自适应学习。这有助于利用组极值(GEV)而不是群中的各个极值值,以便更快地收敛。此外,SACBAS使用基于非主导排序的参考点来使状态空间多样化。为了测试SacBA的数据驱动性能,本研究使用了具有线性内核的支持向量机(SVM)算法。首先,在多目标ZDT和DTLZ测试套件上测试SACBAS算法,并与最近的两个技术相比,基于参考点的非主导分类遗传算法(NSGA III)和基于分解的多目标进化算法(MOEA / d)。其次,基于离线数据使用现实世界案例测试数据驱动的SACBAS。所提出的SACBA被证明可以有效处理离线数据并获得有希望的结果。进行弗里德曼测试以将SACBA与其他两种技术区分开来,并且后HOC测试证实了SACBA获得了更好的超高型指示剂评分并优于NSGA III和MOEA / D。

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  • 来源
    《Applied Artificial Intelligence》 |2021年第8期|440-475|共36页
  • 作者单位

    Norwegian Univ Sci & Technol Dept Mfg & Civil Engn Teknologivegen 22 N-2815 Gjovik Norway;

    Norwegian Univ Sci & Technol Dept Mfg & Civil Engn Teknologivegen 22 N-2815 Gjovik Norway;

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