水平协同模糊聚类的必要预处理

Fusheng Yu, Juan Tang, Ruiqiong Cai
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引用次数: 26

摘要

水平协同模糊c均值(HC-FCM)是处理协同聚类问题的有效工具,其中模式集在不同的特征空间中独立描述,从而得到不同的数据集。通过FCM,可以对这些不同的数据集进行聚类,从而得到不同的划分矩阵。对于其中一个数据集,如何利用其他数据集的聚类信息来帮助自己的聚类,从而给出合理的协同聚类结果是一个有意义的课题,成为HC-FCM的目标。由于潜在的安全和隐私限制,聚类信息只能由分区矩阵而不是数据集本身提供。这限制了使用聚类信息的方式。在W.Pedrycz给出的HC-FCM的原始框架中,直接将划分矩阵引入到聚类算法中,没有进行任何预处理。本文将说明对分割矩阵进行预处理的必要性,并提出一种可行的预处理方法。通过实验验证了该预处理方法的有效性。通过本文的工作,可以很好地进行横向协作模糊c均值。
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A Necessary Preprocessing in Horizontal Collaborative Fuzzy Clustering
Horizontal collaboration fuzzy C-means (HC-FCM) is a useful tool for dealing with collaborative clustering problems where a pattern-set is described in some different feature spaces independently and thus results in different data sets. By means of FCM, clustering may be carried on these different data sets and thus result in different partition matrices. For one of these data sets, how to take means of the clustering information of the other data sets to help its own clustering and thus to give a reasonable collaborative clustering result is a meaningful topic and becomes the aim of HC-FCM. Because of potential security and privacy restrictions, the clustering information can be provided only by partition matrices instead of the data sets themselves. This confines the manner of using the clustering information. In the original frame of HC-FCM given by W.Pedrycz, the partition matrices are directly introduced to the clustering algorithm without any preprocessing. In this paper, we will show the necessity of the preprocessing on the partition matrices and present an available method for the preprocessing. Some experiments are given to show the performance of the proposed method for preprocessing. With the work of this paper, the horizontal collaboration fuzzy C-means will be well carried on.
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