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Normalization-Based Validity Index of Adaptive K-Means Clustering for Multi-Solution Application

机译:用于多解决方案应用的自适应k均值的基于标准化的有效性指标

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摘要

Validity evaluation aims to analyze the quality of the clustering algorithm with different measurement criteria. A variety of assessment methods have been introduced in the application of pattern recognition and computer vision. Although it is well known that mining information of massive data is essential, most of the validity indices only provide a single partitioning scheme for clustering validation. Moreover, the conventional evaluation algorithm is susceptible to the density and dimension of the dataset, which leads to assessment failure. In this paper, a normalization-based validity index (NbVI) is proposed for validity evaluation of the adaptive K-means clustering from a multi-solution perspective. According to the concept of high-compact within clusters and high-separation among groups, NbVI attempts to find the maximum relative ratio between normalized inter-distance and normalized intra-distance. The experimental results demonstrate that the proposed NbVI method exhibits excellent performance for the clustering of the density-unbalanced dataset for multi-solution applications. Moreover, the NbVI validation shows high versatility using different clustering algorithms.
机译:有效性评估旨在分析不同测量标准的聚类算法的质量。在模式识别和计算机视觉中介绍了各种评估方法。虽然众所周知,挖掘大规模数据的挖掘信息至关重要,但大多数有效性指数仅提供用于聚类验证的单个分区方案。此外,传统的评估算法易于数据集的密度和尺寸,这导致评估失败。在本文中,提出了基于归一化的有效性指数(NBVI),用于从多解决方案的角度来评估自适应k均值聚类的有效性评估。根据群集群中的高紧凑型和高分分离的概念,NBVI试图在归一化间间和距离距离中的标准化间之间的最大相对比。实验结果表明,所提出的NBVI方法对多解决方案应用的密度 - 不平衡数据集的聚类表现出优异的性能。此外,NBVI验证使用不同的聚类算法显示出高通用性。

著录项

  • 来源
    《Quality Control, Transactions》 |2020年第2020期|9403-9419|共17页
  • 作者

    Li Tao; Ma Yitao; Endoh Tetsuo;

  • 作者单位

    Tohoku Univ Sch Engn Sendai Miyagi 9808579 Japan;

    Tohoku Univ Sch Engn Sendai Miyagi 9808579 Japan|Tohoku Univ Ctr Innovat Integrated Elect Syst Sendai Miyagi 9808572 Japan;

    Tohoku Univ Sch Engn Sendai Miyagi 9808579 Japan|Tohoku Univ Ctr Innovat Integrated Elect Syst Sendai Miyagi 9808572 Japan;

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

    NbVI; validity index; multi-solution; K-means clustering; unsupervised learning;

    机译:NBVI;有效性指数;多解决方案;K-Meary集群;无监督的学习;
  • 入库时间 2022-08-18 21:58:49

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