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Interpretable interval type-2 fuzzy predicates for data clustering: A new automatic generation method based on self-organizing maps

机译:用于数据聚类的可解释区间2型模糊谓词:一种基于自组织映射的自动生成新方法

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摘要

In previous works, we proposed two methods for data clustering based on automatically discovered fuzzy predicates which were referred to as SOM-based Fuzzy Predicate Clustering (SFPC) [Meschino et al., Neurocomputing, 147, 47-59 (2015)] and Type-2 Data-based Fuzzy Predicate Clustering (T2-DFPC) [Comas et al., Expert Syst. Appl., 68, 136-150 (2017)]. In such methods, fuzzy predicates allow both data clustering and knowledge discovering about the obtained clusters. This last feature constitutes novelty comparing to other existing approaches and it is a major contribution in the data clustering field. Based on these previous methods, in the present paper a new automatic clustering method based on fuzzy predicates is proposed which uses Self-Organizing Maps (SOMs) and is called Type-2 SOM-based Fuzzy Predicate Clustering (T2-SFPC). The new method does not require any prior knowledge about the clustering addressed. First, a random partition is defined on the dataset to be clustered and SOMs are configured and trained using the resulting data subsets. Second, an automatic clustering approach is applied on the SOM codebooks, discovering representative data of the different clusters, which are called cluster prototypes. Third, interval type-2 membership function formed by Gaussian-shape sub-functions and fuzzy predicates are defined, allowing data clustering and its interpretation. The proposed method preserves all the advantages of the previous methods SFPC and T2-DFPC in relation to the knowledge extraction capabilities and their potential application on distributed clustering and parallel computing, but results obtained on several public datasets tested showed more compactness and separation of the clusters defined by the T2-SFPC, outperforming both the previous methods and the several classical clustering approaches tested, considering internal and external validation indices. Additionally, both clustering interpretation and optimization capabilities are improved by the proposed method when compared to the methods SFPC and T2-DFPC. (C) 2017 Elsevier B.V. All rights reserved.
机译:在先前的工作中,我们提出了两种基于自动发现的模糊谓词的数据聚类方法,分别称为基于SOM的模糊谓词聚类(SFPC)[Meschino et al。,Neurocomputing,147,47-59(2015)]和Type -2基于数据的模糊谓词聚类(T2-DFPC)[Comas等,专家系统。 Appl。,68,136-150(2017)]。在这种方法中,模糊谓词既可以进行数据聚类,又可以发现有关所获得聚类的知识。与其他现有方法相比,该最后一个功能构成了新颖性,并且是数据聚类领域的主要贡献。在此基础上,本文提出了一种基于模糊谓词的自动聚类方法,该方法采用自组织映射(SOM),称为基于Type 2 SOM的模糊谓词聚类(T2-SFPC)。新方法不需要有关已解决群集的任何先验知识。首先,在要聚类的数据集上定义随机分区,并使用结果数据子集配置和训练SOM。其次,将自动聚类方法应用于SOM码本,以发现不同聚类的代表性数据,称为聚类原型。第三,定义了由高斯型子函数和模糊谓词形成的区间2型隶属函数,从而允许数据聚类及其解释。相对于知识提取能力及其在分布式聚类和并行计算中的潜在应用而言,所提出的方法保留了SFPC和T2-DFPC先前方法的所有优点,但是在测试的多个公共数据集上获得的结果表明,聚类的紧凑性和分离性更高考虑到内部和外部验证指标,由T2-SFPC定义的性能优于以前的方法和经过测试的几种经典聚类方法。此外,与方法SFPC和T2-DFPC相比,该方法提高了聚类解释和优化能力。 (C)2017 Elsevier B.V.保留所有权利。

著录项

  • 来源
    《Knowledge-Based Systems》 |2017年第1期|234-254|共21页
  • 作者单位

    Consejo Nacl Invest Cient & Tecn, Buenos Aires, DF, Argentina|Univ Nacl Mar del Plata, CONICET, Digital Image Proc Lab, Inst Invest Cient & Tecnol Elect ICyTE,Fac Ingn, Juan B Justo 4302,B7608FDQ, Mar Del Plata, Buenos Aires, Argentina;

    Consejo Nacl Invest Cient & Tecn, Buenos Aires, DF, Argentina|Univ Nacl Mar del Plata, CONICET, Digital Image Proc Lab, Inst Invest Cient & Tecnol Elect ICyTE,Fac Ingn, Juan B Justo 4302,B7608FDQ, Mar Del Plata, Buenos Aires, Argentina;

    Consejo Nacl Invest Cient & Tecn, Buenos Aires, DF, Argentina|Univ Nacl Mar del Plata, CONICET, Digital Image Proc Lab, Inst Invest Cient & Tecnol Elect ICyTE,Fac Ingn, Juan B Justo 4302,B7608FDQ, Mar Del Plata, Buenos Aires, Argentina;

    Univ Nacl Mar del Plata, CONICET, Digital Image Proc Lab, Inst Invest Cient & Tecnol Elect ICyTE,Fac Ingn, Juan B Justo 4302,B7608FDQ, Mar Del Plata, Buenos Aires, Argentina;

    Univ Nacl Mar del Plata, CONICET, Bioengn Lab, Inst Invest Cient & Tecnol Elect ICyTE,Fac Ingn, Juan B Justo 4302,B7608FDQ, Mar Del Plata, Buenos Aires, Argentina;

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

    Fuzzy predicates; Interval type-2 fuzzy logic; Self-organizing maps; Interpretable clustering; Knowledge discovery;

    机译:模糊谓词;区间2型模糊逻辑;自组织图;可解释聚类;知识发现;

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