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Exponential distance-based fuzzy clustering for interval-valued data

机译:基于指数距离的模糊群体用于间隔值数据

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摘要

In several real life and research situations data are collected in the form of intervals, the so called interval-valued data. In this paper a fuzzy clustering method to analyse interval-valued data is presented. In particular, we address the problem of interval-valued data corrupted by outliers and noise. In order to cope with the presence of outliers we propose to employ a robust metric based on the exponential distance in the framework of the Fuzzy C-medoids clustering mode, the Fuzzy C-medoids clustering model for interval-valued data with exponential distance. The exponential distance assigns small weights to outliers and larger weights to those points that are more compact in the data set, thus neutralizing the effect of the presence of anomalous interval-valued data. Simulation results pertaining to the behaviour of the proposed approach as well as two empirical applications are provided in order to illustrate the practical usefulness of the proposed method.
机译:在若干现实生活中,研究情况数据以间隔的形式收集,所谓的间隔值数据。 在本文中,提出了一种分析间隔值数据的模糊聚类方法。 特别是,我们解决了异常值和噪声损坏的间隔值数据的问题。 为了应对异常值的存在,我们建议基于模糊C-METOIDS聚类模式的框架中的指数距离,模糊C-METOIDS聚类模型以指数距离的模糊C-MEDOIDS聚类模型进行稳健的指标。 指数距离为异常值分配小权重和更大权重,对数据集更紧凑的那些点,从而中和存在异常间隔值的效果。 提供了与所提出的方法的行为以及两个实证应用有关的仿真结果,以说明该方法的实际有用性。

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