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首页> 外文期刊>Computers, Materials & Continua >Quantum Hierarchical Agglomerative Clustering Based on One Dimension Discrete Quantum Walk with Single-Point PhaseDefects
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Quantum Hierarchical Agglomerative Clustering Based on One Dimension Discrete Quantum Walk with Single-Point PhaseDefects

机译:用单点相位截相的一个维度离散量子散步的量子分层凝聚聚类

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摘要

As an important branch of machine learning, clustering analysis is widely used in some fields, e.g., image pattern recognition, social network analysis, information security, and so on. In this paper, we consider the designing of clustering algorithm in quantum scenario, and propose a quantum hierarchical agglomerative clustering algorithm, which is based on one dimension discrete quantum walk with single-point phase defects. In the proposed algorithm, two nonclassical characters of this kind of quantum walk, localization and ballistic effects, are exploited. At first, each data point is viewed as a particle and performed this kind of quantum walk with a parameter, which is determined by its neighbors. After that, the particles are measured in a calculation basis. In terms of the measurement result, every attribute value of the corresponding data point is modified appropriately. In this way, each data point interacts with its neighbors and moves toward a certain center point. At last, this process is repeated several times until similar data points cluster together and form distinct classes. Simulation experiments on the synthetic and real world data demonstrate the effectiveness of the presented algorithm. Compared with some classical algorithms, the proposed algorithm achieves better clustering results. Moreover, combining quantum cluster assignment method, the presented algorithm can speed up the calculating velocity.
机译:作为机器学习的重要分支,聚类分析广泛用于某些领域,例如图像模式识别,社交网络分析,信息安全等。在本文中,我们考虑了量子场景中聚类算法的设计,并提出了一种量子层次凝聚聚类算法,其基于单点相位缺陷的一个维度离散量子行走。在所提出的算法中,利用这种量子行走,本地化和弹道效应的两个非分化特征。首先,将每个数据点视为粒子并使用参数执行这种量子散步,该参数由其邻居确定。之后,颗粒以计算为基础测量。就测量结果而言,适当地修改相应数据点的每个属性值。以这种方式,每个数据点与其邻居交互并朝向某个中心点移动。最后,此过程重复多次,直到相似的数据点集群在一起并形成不同的类。综合性和现实世界数据的仿真实验证明了呈现算法的有效性。与一些经典算法相比,所提出的算法实现了更好的聚类结果。此外,组合量子集群分配方法,所呈现的算法可以加速计算速度。

著录项

  • 来源
    《Computers, Materials & Continua》 |2020年第2期|1397-1409|共13页
  • 作者单位

    College of Mathematics and Informatics Fujian Normal University. Fuzhou 350007 China;

    College of Mathematics and Informatics Fujian Normal University. Fuzhou 350007 China;

    School of Computing and Mathematics University of Ulster Northern Ireland BT37 OQB UK;

    College of Mathematics and Informatics Fujian Normal University. Fuzhou 350007 China;

    College of Mathematics and Informatics Fujian Normal University. Fuzhou 350007 China;

    School of Electronic Information Science Fujian Jiangxia University Fuzhou 350108 China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Quantum machine learning; discrete quantum walk; hierarchical agglomerative clustering;

    机译:量子机学习;离散量子步行;分层凝聚聚类;

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