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Evolutionary multi-objective automatic clustering enhanced with quality metrics and ensemble strategy

机译:质量指标和集成策略增强了进化多目标自动聚类

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摘要

Automatic clustering problem, which needs to detect the appropriate clustering without a pre-defined number of clusters (k), is difficult and challenging in unsupervised learning owing to the lack of prior domain knowledge. Despite a rising tendency with the application of evolutionary multi-objective optimization (EMO) techniques for automatic clustering, there still exist some obvious under-explored issues. In this paper, we resort to quality metrics and ensemble strategy for the sake of explicit/implicit knowledge discovery to guide the optimization process. The quality and diversity of solutions defined in terms of cluster validities, as similar to performance indicator for multi-objective optimization, are applied to assist in addressing automatic clustering problems and decreasing unnecessary computational overhead. To be specific, the main components like initialization, reproduction operations, and environmental selection which involved during EMO based automatic clustering are discussed and refined. For the determination of the final partitioning, quality metrics and cluster ensemble strategy are both considered to improve the retrieve system in the unsupervised way. Experiments are conducted from several different aspects and the corresponding analyses are provided, which confirm that the proposals are more efficient and effective for automatic clustering. (C) 2019 Published by Elsevier B.V.
机译:自动聚类问题需要在没有预定义数量的聚类(k)的情况下检测适当的聚类,由于缺乏先验领域知识,在无监督学习中是困难且具有挑战性的。尽管将进化多目标优化(EMO)技术应用于自动聚类的趋势呈上升趋势,但仍然存在一些明显的未开发问题。在本文中,出于显式/隐式知识发现的目的,我们诉诸质量度量和集成策略来指导优化过程。类似于多目标优化的性能指标,根据聚类有效性定义的解决方案的质量和多样性可用于帮助解决自动聚类问题并减少不必要的计算开销。具体而言,讨论并完善了基于EMO的自动聚类过程中涉及的主要组件,如初始化,再现操作和环境选择。为了确定最终分区,都考虑了质量指标和集群集成策略,以无人监督的方式改进检索系统。从几个不同的方面进行了实验,并提供了相应的分析,这证实了该建议对于自动聚类更加有效。 (C)2019由Elsevier B.V.发布

著录项

  • 来源
    《Knowledge-Based Systems》 |2020年第5期|105018.1-105018.21|共21页
  • 作者

  • 作者单位

    Tongji Univ Dept Elect & Informat Engn Shanghai 201804 Peoples R China|Michigan State Univ BEACON Ctr Study Evolut Act E Lansing MI 48824 USA;

    Tongji Univ Dept Elect & Informat Engn Shanghai 201804 Peoples R China;

    Michigan State Univ BEACON Ctr Study Evolut Act E Lansing MI 48824 USA;

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

    Clustering; Evolutionary multi-objective optimization; Cluster validity index; Ensemble method;

    机译:集群;进化多目标优化;聚类有效性指数;合奏方法;

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