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Robust FCMdd-based Linear Clustering for Relational Data with Alternative c-Means Criterion

机译:基于强大的FCMDD基线性聚类,用于关系数据,具有备选的C均值标准

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Relational clustering is actively studied in data mining, in which intrinsic data structure is summarized into cluster structure. A linear fuzzy clustering model based on Fuzzy c-Medoids (FCMdd) is proposed for extracting intrinsic local linear substructures from relational data. Alternative Fuzzy c- Means (AFCM) is an extension of Fuzzy c-means, in which a modified distance measure instead of the conventional Euclidean distance is used based on the robust M-estimation concept. In this paper, the FCMdd-based linear clustering model is further modified in order to extract linear substructure from relational data including outliers, using a pseudo-M-estimation procedure with a weight function for the modified distance measure in AFCM.
机译:在数据挖掘中积极研究关系聚类,其中内在数据结构总结为集群结构。提出了一种基于模糊C-METOIDS(FCMDD)的线性模糊聚类模型,用于从关系数据中提取内在局部线性子结构。替代的模糊C-装置(AFCM)是模糊C-ins的延伸,其中基于稳健的M估计概念使用修改距离测量而不是传统的欧几里德距离。在本文中,进一步修改了基于FCMDD的线性聚类模型,以便从包括异常值的关系数据中提取线性子结构,使用具有用于AFCM中的修改距离测量的重量函数的伪M估计过程。

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