动态聚类中的不确定性建模——软计算视角

Georg Peters, R. Weber, Fernando A. Crespo
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引用次数: 7

摘要

不确定性在聚类中起着重要的作用。例如,在客户细分中,我们可能会遇到这样的情况,即某个客户不一定只属于一个细分市场,即他/她的班级分配是不确定的。已经提出了几种以不同方式使用不确定性建模的聚类算法。最常用的技术是概率论、模糊逻辑和最近的粗糙集。如果不确定性建模在静态聚类中已经很重要了,那么在动态聚类中就变得更加重要了,在动态聚类中,各个聚类的几个元素可能会随着时间的推移而变化。变化产生不确定性,这就是动态聚类中的不确定性建模发挥作用的地方。在本文中,我们简要介绍了两种采用软计算方法的聚类算法,并比较了它们在动态环境中捕获不确定性的能力。并指出了该领域未来的研究问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Uncertainty modeling in dynamic clustering — A soft computing perspective
Uncertainty plays an important role in clustering. For example in customer segmentation we may be faced with the situation that a certain customer not necessarily belongs to just one segment, i.e. his/her class assignment is uncertain. Several cluster algorithms have been proposed that employ uncertainty modeling in different ways. The most frequently used techniques are probability theory, fuzzy logic, and recently rough sets. If uncertainty modeling is already important in static clustering this becomes even more important in dynamic clustering where several elements of the respective cluster can change over time. Changes produce uncertainty and that is where uncertainty modeling in dynamic clustering comes into play. In this paper we present briefly two cluster algorithms that employ soft computing approaches and provide a comparison regarding their capabilities to capture uncertainties in dynamic environments. Future research issues for this area are also identified.
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