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Fuzzy and possibilistic shell clustering algorithms and their application to boundary detection and surface approximation. I

机译:模糊和可能的壳聚类算法及其在边界检测和表面近似中的应用。一世

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摘要

Traditionally, prototype-based fuzzy clustering algorithms such as the Fuzzy C Means (FCM) algorithm have been used to find "compact" or "filled" clusters. Recently, there have been attempts to generalize such algorithms to the case of hollow or "shell-like" clusters, i.e., clusters that lie in subspaces of feature space. The shell clustering approach provides a powerful means to solve the hitherto unsolved problem of simultaneously fitting multiple curves/surfaces to unsegmented, scattered and sparse data. In this paper, we present several fuzzy and possibilistic algorithms to detect linear and quadric shell clusters. We also introduce generalizations of these algorithms in which the prototypes represent sets of higher-order polynomial functions. The suggested algorithms provide a good trade-off between computational complexity and performance, since the objective function used in these algorithms is the sum of squared distances, and the clustering is sensitive to noise and outliers. We show that by using a possibilistic approach to clustering, one can make the proposed algorithms robust.
机译:传统上,基于原型的模糊聚类算法(例如Fuzzy C Means(FCM)算法)已用于查找“紧凑”或“填充”聚类。最近,已经尝试将这种算法推广到空心或“壳状”簇的情况,即位于特征空间的子空间中的簇。壳聚类方法提供了一种强大的手段,可以解决迄今为止未解决的问题,即同时将多个曲线/曲面拟合到未分段,分散和稀疏的数据。在本文中,我们提出了几种模糊和可能的算法来检测线性和二次壳簇。我们还介绍了这些算法的概括,其中的原型代表了高阶多项式函数的集合。所建议的算法在计算复杂度和性能之间提供了很好的折衷,因为这些算法中使用的目标函数是距离的平方和,并且聚类对噪声和离群值敏感。我们表明,通过使用一种可能的聚类方法,可以使所提出的算法具有鲁棒性。

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