An optimization of allocation of information granularity in the interpretation of data structures: toward granular fuzzy clustering.

Witold Pedrycz, Andrzej Bargiela
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引用次数: 196

Abstract

Clustering forms one of the most visible conceptual and algorithmic framework of developing information granules. In spite of the algorithm being used, the representation of information granules-clusters is predominantly numeric (coming in the form of prototypes, partition matrices, dendrograms, etc.). In this paper, we consider a concept of granular prototypes that generalizes the numeric representation of the clusters and, in this way, helps capture more details about the data structure. By invoking the granulation-degranulation scheme, we design granular prototypes being reflective of the structure of data to a higher extent than the representation that is provided by their numeric counterparts (prototypes). The design is formulated as an optimization problem, which is guided by the coverage criterion, meaning that we maximize the number of data for which their granular realization includes the original data. The granularity of the prototypes themselves is treated as an important design asset; hence, its allocation to the individual prototypes is optimized so that the coverage criterion becomes maximized. With this regard, several schemes of optimal allocation of information granularity are investigated, where interval-valued prototypes are formed around the already produced numeric representatives. Experimental studies are provided in which the design of granular prototypes of interval format is discussed and characterized.

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数据结构解释中信息粒度分配的优化:面向颗粒模糊聚类。
聚类是开发信息颗粒最明显的概念和算法框架之一。尽管使用了算法,但信息颗粒簇的表示主要是数字的(以原型、划分矩阵、树形图等形式出现)。在本文中,我们考虑了一个颗粒原型的概念,它概括了集群的数字表示,并以这种方式帮助捕获有关数据结构的更多细节。通过调用造粒-脱粒方案,我们设计的颗粒原型比它们的数字对应(原型)提供的表示更能反映数据的结构。该设计被表述为一个优化问题,该问题以覆盖标准为指导,这意味着我们最大化其粒度实现包含原始数据的数据数量。原型本身的粒度被视为重要的设计资产;因此,它对单个原型的分配被优化,从而使覆盖标准最大化。在此基础上,研究了几种信息粒度的最优分配方案,其中区间值原型是围绕已经产生的数字表示形式形成的。在实验研究中,对区间格式颗粒原型的设计进行了探讨和表征。
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