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A Comparative Study on TIBA Imputation Methods in FCMdd-Based Linear Clustering with Relational Data

机译:基于FCMdd的关系数据线性聚类中TIBA插补方法的比较研究

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Relational fuzzy clustering has been developed for extracting intrinsic cluster structures of relational data and was extended to a linear fuzzy clustering model based on Fuzzyc-Medoids (FCMdd) concept, in which Fuzzyc-Means-(FCM-) like iterative algorithm was performed by defining linear cluster prototypes using two representative medoids for each line prototype. In this paper, the FCMdd-type linear clustering model is further modified in order to handle incomplete data including missing values, and the applicability of several imputation methods is compared. In several numerical experiments, it is demonstrated that some pre-imputation strategies contribute to properly selecting representative medoids of each cluster.
机译:已经开发了关系模糊聚类以提取关系数据的固有聚类结构,并将其扩展到基于Fuzzyc-Medoids(FCMdd)概念的线性模糊聚类模型,其中,通过定义模糊聚类(FCM-)迭代算法线性聚类原型,每个线原型使用两个有代表性的medoid。本文对FCMdd型线性聚类模型进行了进一步修改,以处理包括缺失值在内的不完整数据,并比较了几种插补方法的适用性。在几个数值实验中,证明了一些预先输入策略有助于正确选择每个聚类的代表性类固醇。

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