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A consensus-driven fuzzy clustering

机译:共识驱动的模糊聚类

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摘要

In this study, we are concerned with a concept of consensus-driven fuzzy clustering whose objective is to reconcile a structure developed for patterns in some data set with the structural findings already available for other related data sets (where these data sets are reflective of the same phenomenon which has led to the generation of the original patterns). The results of fuzzy clustering are provided in the form of prototypes and fuzzy partition matrices. Given this form of representation of granular results (clusters), we develop a suitable communication scheme using which consensus could be established in an effective manner. Here, we consider proximity matrices induced by the corresponding partition matrices. An overall optimization scheme is presented in detail along with a way of forming a pertinent criterion governing an intensity of collaboration between the data driven- and knowledge oriented hints guiding the process of consensus formation. Several illustrative numeric examples, using both synthetic data and the data coming from publicly available machine learning repositories are also included.
机译:在这项研究中,我们关注的是共识驱动的模糊聚类的概念,其目的是使为某些数据集中的模式开发的结构与其他相关数据集已经可用的结构发现(这些数据反映了导致产生原始图案的相同现象)。模糊聚类的结果以原型和模糊分区矩阵的形式提供。给定这种表示粒度结果(集群)的形式,我们开发了一种合适的通信方案,使用该方案可以有效地建立共识。在这里,我们考虑由相应分区矩阵引起的邻近矩阵。详细介绍了整体优化方案,并形成了一种用于控制指导共识形成过程的,面向数据的导向知识和面向知识的提示之间的协作强度的相关标准。还包括使用合成数据和来自可公开获得的机器学习存储库的数据的几个示例性数值示例。

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