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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Possibilistic and probabilistic fuzzy clustering: unification within the framework of the non-extensive thermostatistics
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Possibilistic and probabilistic fuzzy clustering: unification within the framework of the non-extensive thermostatistics

机译:可能和概率的模糊聚类:在非广义温度统计框架内的统一

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摘要

Fuzzy clustering algorithms are becoming the major technique in cluster analysis. In this paper, we consider the fuzzy clustering based on objective functions. They can be divided into two categories: possibilistic and probabilistic approaches leading to two different function families depending on the conditions required to state that fuzzy clusters are a fuzzy c-partition of the input data. Recently, we have presented in Menard and Eboueya (Fuzzy Sets and Systems, 27, to be published) an axiomatic derivation of the Possibilistic and Maximum Entropy Inference (MEI) clustering approaches, based upon an unifying principle of physics, that of extreme physical information (EPI) defined by Frieden (Physics from Fisher information, A unification, Cambridge University Press, Cambridge, 1999). Here, using the same formalism, we explicitly give a new criterion in order to provide a theoretical justification of the objective functions, constraint terms, membership functions and weighting exponent m used in the probabilistic and possibilistic fuzzy clustering. Moreover, we propose an unified framework including the two procedures. This approach is inspired by the work of Frieden and Plastino and Plastino and Miller (Physics A 235, 577) extending the principle of extremal information in the framework of the non-extensive thermostatistics. Then, we show how, with the help of EPI, one can propose extensions of the FcM and Possibilistic algorithms. (C) 2003 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 32]
机译:模糊聚类算法正在成为聚类分析的主要技术。在本文中,我们考虑了基于目标函数的模糊聚类。它们可以分为两类:可能方法和概率方法,这取决于陈述模糊聚类是输入数据的模糊c分区的条件,从而导致两个不同的函数族。最近,我们在Menard和Eboueya(模糊集和系统,即将出版,第27期)中提出了一种可能性式和最大熵推断(MEI)聚类方法,该方法基于物理的统一原理,即极端物理信息(EPI)由Frieden定义(来自Fisher信息的物理学,A统一,剑桥大学出版社,剑桥,1999年)。在这里,使用相同的形式主义,我们明确给出一个新的准则,以便为概率和可能性模糊聚类中使用的目标函数,约束项,隶属函数和加权指数m提供理论上的证明。此外,我们提出了包括两个程序的统一框架。这种方法的灵感来自Frieden和Plastino和Plastino和Miller(Physics A 235,577)的工作,它们在非广义温度统计的框架内扩展了极端信息的原理。然后,我们展示了如何借助EPI可以提出FcM和可能算法的扩展。 (C)2003模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:32]

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