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An improved clustering method based on biological visual models

机译:一种基于生物视觉模型的改进聚类方法

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摘要

A clustering methodology based on biological visual models that imitates how humans visually cluster data by spatially associating patterns has been recently proposed. The method is based on Cellular Neural Networks and some resolution adjustments. The Cellular Neural Network rebuilds low-density areas while different resolutions find the best clustering option. The algorithm has demonstrated good performance compared to other clustering techniques. However, its main drawbacks correspond to its inability to operate with more than two-dimensional data sets and the computational time required for the resolution adjustment mechanism. This paper proposes a new version of this clustering methodology to solve such flaws. In the new approach, a pre-processing stage is incorporated featuring a Self-Organization Map that maps complex high-dimensional relations into a reduced lattice yet preserving the topological organization of the initial data set. This reduced representation is employed as the two-dimensional data set for further processing. In the new version, the resolution adjustment process is also accelerated through the use of an optimization method that combines the Hill-Climbing and the Random Search techniques. By incorporating such mechanisms rather than evaluating all possible resolutions, the optimization strategy finds the best resolution for a clustering problem by using a limited number of iterations. The proposed approach has been evaluated, considering several two-dimensional and high-dimensional datasets. Experimental evidence exhibits that the proposed algorithm performs the clustering task over complex problems delivering a 46% faster on average than the original method. The approach is also compared to other popular clustering techniques reported in the literature. Computational experiments demonstrate competitive results in comparison to other algorithms in terms of accuracy and robustness.
机译:基于生物视觉模型的聚类方法,最近提出了通过空间关联模式对人类视觉群集数据的基础。该方法基于蜂窝神经网络和一些分辨率调整。蜂窝神经网络重建低密度区域,而不同的分辨率找到最佳的聚类选项。与其他聚类技术相比,该算法表现出良好的性能。然而,其主要缺点对应于其无法使用多于二维数据集和分辨率调整机制所需的计算时间来操作。本文提出了新版本的这种聚类方法来解决这些缺陷。在新方法中,采用预处理阶段,其具有自组织地图,该自组织地图将复杂的高维关系映射到减少的晶格中,但却保留了初始数据集的拓扑组织。这种缩小的表示被用作用于进一步处理的二维数据集。在新版本中,通过使用结合山坡和随机搜索技术的优化方法,还加速了分辨率调整过程。通过结合这种机制而不是评估所有可能的分辨率,优化策略通过使用有限数量的迭代来找到聚类问题的最佳分辨率。考虑到几个二维和高维数据集,已经评估了所提出的方法。实验证据表明,所提出的算法在平均速度比原始方法平均快速提供46%的复杂问题的聚类任务。该方法也与文献中报道的其他流行聚类技术进行了比较。计算实验表明与准确性和稳健性方面的其他算法相比,竞争结果。

著录项

  • 来源
    《Applied Mathematical Modelling》 |2020年第9期|174-191|共18页
  • 作者单位

    Departamento de Electronica Universidad de Guadalajara CUCEI Av. Revolution 1500 C.P 44430 Guadalajara Jal Mexico Desarrollo de Software Centro de Ensenanza Tecnica Industrial Colomos Calle Nueva Escotia 1885 Providencia 5a Section C.P. 44638 Guadalajara Jal Mexico Universidad Panamericana Facultad de Ingenieria Prolongation Calzada Circunvalacion Poniente 49 Zapopan Jalisco 45010 Mexico;

    Departamento de Electronica Universidad de Guadalajara CUCEI Av. Revolution 1500 C.P 44430 Guadalajara Jal Mexico;

    Departamento de Electronica Universidad de Guadalajara CUCEI Av. Revolution 1500 C.P 44430 Guadalajara Jal Mexico;

    Departamento de Electronica Universidad de Guadalajara CUCEI Av. Revolution 1500 C.P 44430 Guadalajara Jal Mexico;

    Desarrollo de Software Centro de Ensenanza Tecnica Industrial Colomos Calle Nueva Escotia 1885 Providencia 5a Section C.P. 44638 Guadalajara Jal Mexico;

    Departamento de Electronica Universidad de Guadalajara CUCEI Av. Revolution 1500 C.P 44430 Guadalajara Jal Mexico;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Hill-Climbing; Random Search; Clustering; Density clustering methods; Cellular neuralonlinear networks;

    机译:爬山;随机搜索;聚类;密度聚类方法;蜂窝神经/非线性网络;

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