用相交球体可视化高维数据集中的聚类

F. Hoppner, F. Klawonn
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引用次数: 4

摘要

在本文中,我们重新考虑了将高维数据集映射到低维可视化中的问题。我们采用了多维缩放的思想,但不是将高维点投影到低维表示中,而是将高维空间中的集群投影到3d球体中。我们的目标不是保持与高维空间的距离,而是保持星团的相互依赖关系,并试图通过球体的排列来恢复它们。使用集群和球体而不是单个数据对象使该方法更适合于更大的数据集。我们的方法也可以被认为是一种聚类效度调查的视觉技术。强烈重叠的集群或球体在可视化是一个不合适的集群结果的指标
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Visualising Clusters in High-Dimensional Data Sets by Intersecting Spheres
In this paper, we re-consider the problem of mapping a high-dimensional data set into a low-dimensional visualisation. We adopt the idea of multidimensional scaling but instead of projecting a high-dimensional point to a low-dimensional representation, we project a cluster in the high-dimensional space to a 3D-sphere. Rather than preserving distances from the high-dimensional space we aim at preserving the cluster interdependencies and try to recover them by the arrangement of the spheres. Using clusters and spheres rather than single data objects makes the method much more suitable for larger data sets. Our method can also be considered as a visual technique for cluster validity investigations. Strongly overlapping clusters or spheres in the visualisation are indicators for an unsuitable clustering result
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