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Deep data fuzzy clustering

机译:深度数据模糊聚类

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摘要

In this paper we present a clustering method called Deep Data clustering. The idea of the proposed method is based on a decomposition of an input dataset. The aim od the decomposition (or dimensionality reduction) process is to reveal internal data structures in the dataset. Two methods are selected for this purpose: the principal component analysis (PCA) and the Fisher linear discriminant (FLD). The reduction process is repeated as long as the number of features is equal to one. Meanwhile, the clustering procedure is applied for the each reduced dataset. Finally, based on the clustering results obtained for the reduced datasets, the input dataset is clustered by applying the collaborative fuzzy clustering method. The well known Pima and Iris databases are used in conducted numerical experiment. The obtained results show usefulness of the proposed approach.
机译:在本文中,我们呈现了一种称为深度数据聚类的聚类方法。 所提出的方法的思想基于输入数据集的分解。 AIM OD分解(或维度减少)进程是为了在数据集中揭示内部数据结构。 为此目的选择了两种方法:主成分分析(PCA)和Fisher线性判别(FLD)。 重复减少过程,只要特征的数量等于一个即可重复。 同时,群集过程适用于每个缩小的数据集。 最后,基于为缩小数据集获得的聚类结果,通过应用协作模糊聚类方法来聚类输入数据集。 公知的PIMA和IRIS数据库用于进行的数值实验。 所获得的结果显示了所提出的方法的有用性。

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