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首页> 外文期刊>Journal of Advanced Computatioanl Intelligence and Intelligent Informatics >Visualization of Non-Euclidean Relational Data by Robust Linear Fuzzy Clustering Based on FCMdd Framework
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Visualization of Non-Euclidean Relational Data by Robust Linear Fuzzy Clustering Based on FCMdd Framework

机译:基于FCMdd框架的稳健线性模糊聚类可视化非欧式关系数据

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摘要

Visualization is a fundamental approach for revealing intrinsic structures in multidimensional observation. This paper considers visualization of non-Euclidean relational data by extracting local linear substructures. In order to extract robust linear clusters, an FCMdd-based linear fuzzy clustering model is applied in conjunction with a robust measure of alternative c-means. Non-Euclidean data matrices are handled with β-spread transformation in a manner similar to that of NERF c-Means. In several experiments, robust feature maps derived by the robust clustering model are compared with feature maps given by the conventional clustering model and Multi-Dimensional Scaling (MDS).
机译:可视化是揭示多维观察中内在结构的基本方法。本文通过提取局部线性子结构来考虑非欧几里得关系数据的可视化。为了提取鲁棒的线性聚类,基于FCMdd的线性模糊聚类模型与替代c均值的鲁棒度量一起应用。非欧氏数据矩阵以类似于NERF c-Means的方式通过β扩展变换进行处理。在几个实验中,将鲁棒聚类模型得出的鲁棒特征图与常规聚类模型和多维缩放(MDS)给出的特征图进行了比较。

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