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首页> 外文期刊>IEEE Transactions on Fuzzy Systems >Uncertain Fuzzy Clustering: Interval Type-2 Fuzzy Approach to $C$-Means
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Uncertain Fuzzy Clustering: Interval Type-2 Fuzzy Approach to $C$-Means

机译:不确定的模糊聚类:$ C $ -Means的区间2型模糊方法

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摘要

In many pattern recognition applications, it may be impossible in most cases to obtain perfect knowledge or information for a given pattern set. Uncertain information can create imperfect expressions for pattern sets in various pattern recognition algorithms. Therefore, various types of uncertainty may be taken into account when performing several pattern recognition methods. When one performs clustering with fuzzy sets, fuzzy membership values express assignment availability of patterns for clusters. However, when one assigns fuzzy memberships to a pattern set, imperfect information for a pattern set involves uncertainty which exist in the various parameters that are used in fuzzy membership assignment. When one encounters fuzzy clustering, fuzzy membership design includes various uncertainties (e.g., distance measure, fuzzifier, prototypes, etc.). In this paper, we focus on the uncertainty associated with the fuzzifier parameter m that controls the amount of fuzziness of the final C-partition in the fuzzy C-means (FCM) algorithm. To design and manage uncertainty for fuzzifier m, we extend a pattern set to interval type-2 fuzzy sets using two fuzzifiers m1 and m2 which creates a footprint of uncertainty (FOU) for the fuzzifier m. Then, we incorporate this interval type-2 fuzzy set into FCM to observe the effect of managing uncertainty from the two fuzzifiers. We also provide some solutions to type-reduction and defuzzification (i.e., cluster center updating and hard-partitioning) in FCM. Several experimental results are given to show the validity of our method
机译:在许多模式识别应用程序中,在大多数情况下,对于给定的模式集,可能无法获得完美的知识或信息。不确定的信息会在各种模式识别算法中为模式集创建不完善的表达式。因此,当执行几种模式识别方法时,可以考虑各种类型的不确定性。当使用模糊集执行聚类时,模糊隶属度值表示聚类模式的分配可用性。但是,当人们将模糊隶属度分配给模式集时,模式集的不完善信息会涉及不确定性,不确定性存在于模糊隶属度分配中使用的各种参数中。当人们遇到模糊聚类时,模糊隶属度设计会包含各种不确定性(例如距离测度,模糊器,原型等)。在本文中,我们关注模糊器参数m的不确定性,模糊器参数m控制着模糊C均值(FCM)算法中最终C分区的模糊性。为了设计和管理模糊器m的不确定性,我们使用两个模糊器m1和m2将模式集扩展为间隔类型2模糊集,这会为模糊器m创建不确定性足迹(FOU)。然后,我们将此间隔2型模糊集合并到FCM中,以观察管理两个模糊器的不确定性的效果。我们还为FCM中的类型减少和反模糊化(即集群中心更新和硬分区)提供了一些解决方案。给出了一些实验结果以证明我们方法的有效性

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